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HUCEBOT - 2025

2025Activity​​ reportProject-TeamHUCEBOT

RNSR:​​​‌ 202524727Y
  • Research center Inria​ Centre at Université de​‌ Lorraine
  • In partnership with:​​CNRS, Université de Lorraine​​​‌
  • Team name: HUman CEntered​ roBOTics
  • In collaboration with:​‌Laboratoire lorrain de recherche​​ en informatique et ses​​​‌ applications (LORIA)

Creation of​ the Project-Team: 2025 August​‌ 01

Each year, Inria​​ research teams publish an​​​‌ Activity Report presenting their​ work and results over​‌ the reporting period. These​​ reports follow a common​​​‌ structure, with some optional​ sections depending on the​‌ specific team. They typically​​ begin by outlining the​​​‌ overall objectives and research​ programme, including the main​‌ research themes, goals, and​​ methodological approaches. They also​​​‌ describe the application domains​ targeted by the team,​‌ highlighting the scientific or​​ societal contexts in which​​​‌ their work is situated.​

The reports then present​‌ the highlights of the​​ year, covering major scientific​​​‌ achievements, software developments, or​ teaching contributions. When relevant,​‌ they include sections on​​ software, platforms, and open​​​‌ data, detailing the tools​ developed and how they​‌ are shared. A substantial​​ part is dedicated to​​​‌ new results, where scientific​ contributions are described in​‌ detail, often with subsections​​ specifying participants and associated​​​‌ keywords.

Finally, the Activity​ Report addresses funding, contracts,​‌ partnerships, and collaborations at​​ various levels, from industrial​​​‌ agreements to international cooperations.​ It also covers dissemination​‌ and teaching activities, such​​ as participation in scientific​​​‌ events, outreach, and supervision.​ The document concludes with​‌ a presentation of scientific​​ production, including major publications​​​‌ and those produced during​ the year.

Keywords

Computer​‌ Science and Digital Science​​

  • A5.1. Human-Computer Interaction
  • A5.1.2.​​​‌ Evaluation of interactive systems​
  • A5.1.3. Haptic interfaces
  • A5.1.5.​‌ Body-based interfaces
  • A5.1.9. User​​ and perceptual studies
  • A5.10.​​​‌ Robotics
  • A5.10.1. Design
  • A5.10.2.​ Perception
  • A5.10.3. Planning
  • A5.10.4.​‌ Robot control
  • A5.10.5. Robot​​ interaction (with the environment,​​​‌ humans, other robots)
  • A5.10.8.​ Cognitive robotics and systems​‌
  • A5.11. Smart spaces
  • A5.11.1.​​ Human activity analysis and​​​‌ recognition
  • A6. Modeling, simulation​ and control
  • A6.1. Methods​‌ in mathematical modeling
  • A6.4.​​ Automatic control
  • A6.4.2. Stochastic​​​‌ control
  • A6.4.6. Optimal control​
  • A9.2. Machine learning
  • A9.2.1.​‌ Supervised learning
  • A9.2.2. Unsupervised​​ learning
  • A9.2.3. Reinforcement learning​​​‌
  • A9.2.4. Optimization and learning​
  • A9.2.5. Bayesian methods
  • A9.2.6.​‌ Neural networks
  • A9.2.8. Deep​​ learning
  • A9.5. Robotics and​​​‌ AI
  • A9.7. AI algorithmics​
  • A9.11. Generative AI
  • A9.14.​‌ Evaluation of AI models​​
  • A9.16. Societal impact of​​​‌ AI

Other Research Topics​ and Application Domains

  • B1.2.2.​‌ Cognitive science
  • B2.1. Well​​ being
  • B2.2.7. Virtual human​​​‌ twin
  • B2.5. Handicap and​ personal assistances
  • B5. Industry​‌ of the future
  • B5.1.​​ Factory of the future​​​‌
  • B5.2.4. Aerospace
  • B5.6. Robotic​ systems
  • B5.8. Learning and​‌ training
  • B6.6. Embedded systems​​
  • B9.6.1. Psychology
  • B9.6.10. Digital​​ humanities
  • B9.7.2. Open data​​​‌
  • B9.9. Ethics

1 Team‌ members, visitors, external collaborators‌​‌

Research Scientists

  • Serena Ivaldi​​ [Team leader,​​​‌ INRIA, Senior Researcher‌, from Aug 2025‌​‌, HDR]
  • Fabio​​ Amadio [INRIA,​​​‌ Starting Research Position,‌ from Nov 2025]‌​‌
  • Guillaume Bellegarda [INRIA​​, ISFP, from​​​‌ Oct 2025]
  • Pauline‌ Maurice [CNRS,‌​‌ Researcher, from Aug​​ 2025]
  • Enrico Mingo​​​‌ Hoffman [INRIA,‌ ISFP, from Aug‌​‌ 2025]
  • Jean-Baptiste Mouret​​ [INRIA, Senior​​​‌ Researcher, from Aug‌ 2025, HDR]‌​‌

Faculty Member

  • Maria Elisabetta​​ Zibetti [UNIV PARIS​​​‌ VIII, Associate Professor‌ Delegation, from Sep‌​‌ 2025]

Post-Doctoral Fellows​​

  • Anna Bucchieri [UL​​​‌, Post-Doctoral Fellow,‌ from Aug 2025]‌​‌
  • Alexandre Oliveira Souza [​​INRIA, Post-Doctoral Fellow​​​‌, from Nov 2025‌]
  • Phani Teja Singamaneni‌​‌ [INRIA, Post-Doctoral​​ Fellow, from Oct​​​‌ 2025]

PhD Students‌

  • Mathis Antonetti [INRIA‌​‌, from Aug 2025​​]
  • Georgios Kalakonis [​​​‌UL, from Dec‌ 2025]
  • Ioannis Loizou‌​‌ [INRIA, from​​ Oct 2025]
  • Raphael​​​‌ Lorenzo [INRIA,‌ from Aug 2025]‌​‌
  • Thomas Martin [INRIA​​, from Aug 2025​​​‌]
  • Dionis Totsila [‌INRIA, from Aug‌​‌ 2025]
  • Konstantinos Tsakonas​​ [INRIA, from​​​‌ Aug 2025]
  • Ioannis‌ Tsikelis [INRIA,‌​‌ from Aug 2025]​​
  • Aya Yaacoub [CNRS​​​‌, from Aug 2025‌]

Technical Staff

  • Fabio‌​‌ Amadio [INRIA,​​ Engineer, from Aug​​​‌ 2025 until Oct 2025‌]
  • Leonardo Bertelli [‌​‌INRIA, Engineer,​​ from Sep 2025]​​​‌
  • Raphael Bousigues [INRIA‌, Engineer, from‌​‌ Aug 2025 until Aug​​ 2025]
  • Clemente Donoso​​​‌ [INRIA, Engineer‌, from Aug 2025‌​‌]
  • Raphael Lartot [​​INRIA, Engineer,​​​‌ from Aug 2025 until‌ Aug 2025]

Interns‌​‌ and Apprentices

  • Célian Becques​​ [CNRS, from​​​‌ Aug 2025 until Aug‌ 2025]
  • Mahmoud Elsayed‌​‌ [INRIA, Intern​​, from Aug 2025​​​‌ until Aug 2025]‌
  • Noemie Forest [INRIA‌​‌, Intern, from​​ Sep 2025]
  • Louis​​​‌ Grohens [ENS Rennes‌, from Aug 2025‌​‌ until Sep 2025]​​
  • Sami Leroux [UL​​​‌, from Oct 2025‌]
  • Evangelos Tsiatsianas [‌​‌UL, from Sep​​ 2025]

Administrative Assistants​​​‌

  • Véronique Constant [INRIA‌]
  • Antoinette Courrier [‌​‌CNRS]
  • Sylvie Hilbert​​ [INRIA]
  • Gallown​​​‌ Nizard [UL]‌

Visiting Scientists

  • Meghan Huber‌​‌ [University of Massachusetts​​ Amherst, from Nov​​​‌ 2025]
  • Michael Vanuzzo‌ [UNIV PADOVA,‌​‌ from Aug 2025 until​​ Sep 2025]

2​​​‌ Overall objectives

The HUCEBOT‌ project-team was officially created‌​‌ on August 2025. It​​ is dedicated to advancing​​​‌ algorithms for human-centered robots:‌ robots that are not‌​‌ working autonomously in isolation,​​ but that react, interact,​​​‌ collaborate, and assist humans‌ to the best of‌​‌ their capacity. To do​​ so, these robots need​​​‌ to intertwine multi-contact whole-body‌ control, digital simulations of‌​‌ interacting humans, and data-driven​​​‌ models of human movements​ and intentions. The team's​‌ methods define a unified​​ framework that enables the​​​‌ physical simulation and control​ of both virtual humans​‌ and robots, implemented into​​ interconnected software libraries and​​​‌ modules that are validated​ on the many robotics​‌ platforms of LORIA (UMR​​ 7503 CNRS/Université de Lorraine)​​​‌ and of the Inria​ Centre at Université de​‌ Lorraine. HUCEBOT's goal is​​ to enhance workplace conditions​​​‌ for improved ergonomics and​ safety using robots: to​‌ either replace the human​​ in dangerous and/or remote​​​‌ situations, using teleoperated robotic​ avatars; or to physically​‌ assist the human at​​ work, using cobotics solutions​​​‌ such as exoskeletons.

Objectives​

In HUCEBOT, we model​‌ humans with rigid body​​ models, which makes them​​​‌ substantially equivalent to humanoid​ robots. When humans interact​‌ with robots (humanoids, cobots,​​ exoskeletons, ...), the​​​‌ robot must control the​ contact forces between the​‌ two and the balance​​ of the dyad (both​​​‌ must not fall) while​ satisfying the robot's and​‌ the human's dynamics constraints.​​ Exoskeletons are wearable robots,​​​‌ i.e., articulated robots in​ physical contact with humans:​‌ simulating/controlling an exoskeleton requires​​ modeling and controlling the​​​‌ physical contacts between the​ robot and the digital​‌ human/estimated human, which is​​ therefore analogous to simulating/controlling​​​‌ a “more complex” humanoid​ robot. With this approach,​‌ all the modeling and​​ control tools developed for​​​‌ humanoid robots can be​ extended to humans and​‌ wearable robots.

Our general​​ goal is to improve​​​‌ the human well-being at​ work using human-centered robots:​‌ by replacing the human​​ in dangerous and/or remote​​​‌ situations, using teleoperated robotic​ avatars that continuously interact​‌ with the operators and​​ assist them in their​​​‌ remote operations; and by​ physically assisting the human​‌ at work, using collaborative​​ robotics solutions such as​​​‌ exoskeletons to reduce their​ effort and minimize the​‌ risk of musculoskeletal disorders.​​

Our fundamental principle is​​​‌ that robots need to​ consider the human in​‌ their control, learning and​​ adaptation processes: a human​​​‌ model and online estimator​ are needed, as they​‌ inform the controller about​​ the human's current dynamics,​​​‌ intent and ergonomics. Our​ ambition is to develop​‌ user-specific modeling, control, prediction​​ and learning algorithms that​​​‌ can be used by​ the robots to predict​‌ the human's intention and​​ required assistance, and optimally​​​‌ control their movement and​ interaction to assist humans​‌ optimally.

To do so,​​ the team relies on​​​‌ three scientific pillars: (1)​ whole-body control for human-robot​‌ collaboration; (2) digital human​​ modeling and simulation; (3)​​​‌ data-driven human motion prediction.​

3 Research program

Our​‌ research program builds on​​ the ongoing research endeavors​​​‌ of the team members,​ who have experience in​‌ whole-body control, simulation and​​ machine learning to different​​​‌ degrees. The program aims​ to address some of​‌ the current limits and​​ constraints that prevent robots​​​‌ from physically assisting humans​ at work. Recognizing these​‌ limitations, we have identified​​ several necessary advances in​​​‌ control, simulation, prediction and​ learning, as well as​‌ compelling practical applications to​​ validate the new algorithms​​​‌ and methods. These include​ the development of robots​‌ designed to assist humans,​​ physically and remotely, in​​ tasks such as pushing​​​‌ carts, lifting heavy objects,‌ and opening doors and‌​‌ drawers.

Incidentally, this kind​​ of tasks are also​​​‌ addressed in the European‌ project euROBIN, in which‌​‌ we lead the Work​​ Package on Personal Robotics,​​​‌ and the field experiments‌ of the PEPR O2R‌​‌ “Organic Robotics”, where we​​ coordinate the Focus Project​​​‌ on Decision, Learning and‌ Interaction.

3.1 Axis 1‌​‌ - Whole-body control for​​ human-robot collaboration

Leaders: E.​​​‌ Mingo Hoffman, S. Ivaldi‌

Participants: J.-B. Mouret, P.‌​‌ Maurice, G. Bellegarda

Whole-body​​ planning and control consist​​​‌ of techniques that exploit‌ the entire body structure‌​‌ of a robot, e.g.,​​ multiple arms, limbs, and​​​‌ legs, its redundancy and‌ its environment to execute‌​‌ a desired movement. Achieving​​ complete whole-body control of​​​‌ a robotic system with‌ real-time performances increases the‌​‌ capability of the platform​​ to complete complex loco-manipulation​​​‌ tasks, also in terms‌ of agility and dexterity.‌​‌ Whole-body controllers are implemented​​ as optimal controllers leveraging​​​‌ mathematical programming techniques: typically,‌ quadratic programming, which computes,‌​‌ for example, stabilizing Center​​ of Mass trajectories, contact​​​‌ forces and the robot's‌ joint commands (torques, positions),‌​‌ considering a model of​​ the system, a cost​​​‌ to be minimized, and‌ several constraints associated to‌​‌ the hardware and the​​ environment. The main difficulty​​​‌ for whole-body controllers for‌ robots is the real-time‌​‌ constraints: at every 1​​ ms, the​​​‌ robot needs to have‌ a feasible solution to‌​‌ the optimization problem to​​ control its motors.

Multi-contact​​​‌ and agile loco-manipulation

Our‌ first objective is to‌​‌ design whole-body control schemes​​ and algorithms that enable​​​‌ a humanoid robot (or‌ an exoskeleton or a‌​‌ digital human model) to​​ control its movement while​​​‌ interacting with the environment‌ (including humans) engaging multiple‌​‌ contacts, manipulating heavy payloads,​​ and executing agile and​​​‌ dynamic tasks. These are‌ still big challenges, for‌​‌ both humanoid robots and​​ exoskeletons, to overcome to​​​‌ have robots that physically‌ help humans: they need‌​‌ to produce suitable forces​​ and follow the humans​​​‌ in their movements, which‌ are notably faster and‌​‌ more agile than what​​ robots are capable of​​​‌ doing today. These new‌ challenges add on top‌​‌ of the main control​​ challenges associated with complex​​​‌ robotics systems, which are‌ to balance and not‌​‌ fall, to not harm​​ the human, and in​​​‌ general, to coordinate a‌ large number of degrees-of-freedom.‌​‌ Our ambitious goal is​​ to design and deploy​​​‌ whole-body control schemes on‌ our robots to achieve‌​‌ the execution of agile​​ loco-manipulation (e.g., climbing stairs,​​​‌ carrying payloads, pushing carts,‌ throwing and catching) and‌​‌ teleoperated whole-body manipulation (e.g.,​​ manipulating objects in the​​​‌ environment at the natural‌ human speed). Since we‌​‌ want robots to assist​​ humans, they need to​​​‌ keep the pace that‌ humans have in their‌​‌ activities, and not slow​​ them down, to the​​​‌ point of frustration and‌ human rejection. For example,‌​‌ an exoskeleton must follow​​ the human's movements, which​​​‌ are quite fast, without‌ hindering their gestures; whereas‌​‌ a teleoperated robot avatar​​ must execute the human's​​​‌ command in its remote‌ environment as if the‌​‌ human would do them.​​​‌

Leveraging machine learning for​ modeling, control and agile​‌ motions

We plan to​​ investigate data-driven learning (see​​​‌ also Axis 3), both​ for generating candidate trajectories​‌ and to train new​​ model-free controllers that go​​​‌ beyond the limits imposed​ by model-based controllers.

We​‌ will apply reinforcement learning​​ over locomotion and loco-manipulation​​​‌ policies and leverage GPU​ accelerations, which have proven​‌ to be highly effective​​ in quadrupedal locomotion but​​​‌ have not been fully​ explored in humanoid robotics​‌ 37.

Another problem​​ that is yet unsolved​​​‌ for humanoid robots is​ how to rapidly change​‌ their contacts to improve​​ their task manipulability, reducing​​​‌ energy consumption while maintaining​ their balance. Human demonstrations,​‌ reinforcement learning and quality​​ diversity 46 are all​​​‌ promising techniques. The latter​ has been previously used​‌ in the team to​​ generate one fast hand​​​‌ contact to preserve the​ balance of the robot​‌ in case of leg​​ damage 29: here,​​​‌ the challenge is to​ scale to many contacts​‌ and in particular to​​ address rapid movements of​​​‌ the feet.

Human-aware collaborative​ controllers

We aim at​‌ designing collaborative controllers that​​ are “human-aware”: at​​​‌ a low level, this​ means that the whole-body​‌ controller considers the human​​ dynamics, possibly anticipating the​​​‌ human intents. In past​ work, we included the​‌ human model in the​​ description of the system's​​​‌ dynamics in the formulation​ of our Quadratic Programming​‌ controller, considering that humans​​ and robots were not​​​‌ two separate entities in​ interaction, but two parts​‌ of a single dynamics​​ system to control 51​​​‌, 48. The​ collaboration/cooperation paradigm was fixed.​‌ We want to go​​ beyond these limits: (1)​​​‌ reasoning in probabilistic terms​ about the possible ways​‌ humans will act and​​ react to the robot's​​​‌ behavior, (2) adapting the​ robot's policy to the​‌ human behavior, (3) anticipating​​ the human behavior and​​​‌ movement as well, using​ the methods of Axis​‌ 3.

3.2 Axis 2​​ - Digital human modeling​​​‌ and simulation

Leaders: P.​ Maurice, S. Ivaldi

Participants:​‌ E. Mingo Hoffman, J.-B.​​ Mouret

Our second objective​​​‌ is to develop algorithms​ for the physical simulation​‌ of humans interacting with​​ robots. Here the challenge​​​‌ is to be able​ to simulate their mutual​‌ interaction and in particular​​ the effect that the​​​‌ robot has on the​ human body, considering individual​‌ factors and aligning as​​ much as possible the​​​‌ simulation to the reality.​

Experimental studies with human​‌ participants are at the​​ core of our methodology.​​​‌

Towards realistic simulation of​ humans and their tasks​‌

Our ambition is to​​ reduce the reality gap​​​‌ in the simulation, making​ sure the simulation is​‌ coherent with human physics​​ and biomechanics so that​​​‌ it can be used​ for motion synthesis and​‌ analysis offline, and to​​ inform the robot policies​​​‌ online. In the line​ of our past work,​‌ we seek a trade-off​​ between the reality gap​​​‌ and the computational complexity:​ we will not develop​‌ musculo-skeletal models, but rigid​​ body models, which are​​​‌ by definition an approximation​ of the real body​‌ but are faster to​​ compute. In the same​​ effort to reduce computational​​​‌ time, we will leverage‌ Quadratic Programming approaches –possibly‌​‌ coupled with Model Predictive​​ Control– to generate the​​​‌ motion of the human‌ model. While the global‌​‌ optimality of the generated​​ motion cannot be guaranteed,​​​‌ this coupling of a‌ purely reactive low-level controller‌​‌ with higher-level planning drastically​​ reduces computation costs compared​​​‌ to optimal control methods‌ that are traditionally used‌​‌ to generate human motion.​​ We aim to have:​​​‌ (1) a realistic physical‌ simulation in terms of‌​‌ whole-body kinematics and dynamics​​ features (e.g., shifts in​​​‌ the center of mass);‌ (2) to obtain joint‌​‌ torques and efforts that​​ are coherent with physiological​​​‌ measures, in particular in‌ the case of interaction‌​‌ with wearable devices 47​​; (3) have better​​​‌ models of fatigue (physical‌ and cognitive) and its‌​‌ effect on human movements​​ and constraints over time​​​‌ 52. Having better‌ models will enable us‌​‌ to improve the quality​​ of offline simulations and​​​‌ replay of data recorded‌ at our partner's premises,‌​‌ such as at the​​ University Hospital of Nancy​​​‌ (CHRU Nancy) 35,‌ at the Meurthe-et-Moselle Firefighters‌​‌ (SDIS54) Training Center 44​​.

Sensing and software​​​‌

Adequate sensing is necessary‌ to compare the simulated‌​‌ data with the ground​​ truth. We usually work​​​‌ with wearable sensors:‌ IMUs and motion capture‌​‌ suits (to track posture​​ in real-time), EMG (to​​​‌ measure muscle activation and‌ co-contraction), EKG (to measure‌​‌ cardiac activity, an indirect​​ measure of physical effort),​​​‌ force plates (to measure‌ contact forces and center‌​‌ of pressure during standing​​ and locomotion) 43,​​​‌ 35. Using all‌ these sensors to capture‌​‌ human motion (both to​​ record tasks and to​​​‌ have ground truth measurements)‌ and their physiological status‌​‌ is possible in lab​​ studies, but it is​​​‌ often infeasible in real-world‌ experiments on the field‌​‌ and pilot studies. Wearable​​ sensors will be used​​​‌ to collect data for‌ training machine learning models‌​‌ of contact forces and​​ “reality gap” correction terms​​​‌ that will be eventually‌ integrated to the human‌​‌ simulation.

3.3 Axis 3​​ - Data-driven human movement​​​‌ prediction

Leaders: J.-B. Mouret,‌ S. Ivaldi

Participants: E.‌​‌ Mingo Hoffman, P. Maurice,​​ G. Bellegarda

The third​​​‌ objective is to develop‌ machine learning algorithms to‌​‌ predict the future movement​​ or intention so that​​​‌ the robot can anticipate‌ the motion of the‌​‌ humans in time and​​ thus better assist them.​​​‌ For example, we aim‌ at leveraging supervised learning‌​‌ to find a function​​ f(·)​​​‌ (e.g., a neural network)‌ such that:

x ^‌​‌ t + 1 ,​​ , x ^​​​‌ t + N =‌ f ( y t‌​‌ - K , ⋯​​ , y t )​​​‌

where xt is‌ the state of a‌​‌ human at time-step t​​, x^t​​​‌ is its prediction, N‌ is the length of‌​‌ the prediction horizon and​​ K is the length​​​‌ of the past observations‌ y that are considered‌​‌ to make the prediction.​​ In the simplest case,​​​‌ y=x and‌ so we only use‌​‌ the history of the​​​‌ human state to predict​ its future, but we​‌ can consider more cases​​ in which y contains​​​‌ multimodal data, trajectories, sensor​ measurements, etc. While there​‌ exist numerous machine learning​​ approaches for this kind​​​‌ of time-series prediction 38​, we will contribute​‌ with novel dataset, models​​ and learning algorithms that​​​‌ take advantage of the​ specific features of human​‌ trajectories in different environments​​ and are well suited​​​‌ to the robotic context​ (typical dimensionality, uncertainty quantification,​‌ safety, ...). We focus​​ on short predictions (typically​​​‌ 1-2 seconds) and on​ models that quantify their​‌ uncertainty and express different​​ possible futures, so that​​​‌ they propose precise predictions​ when it is possible​‌ (e.g., continuing a well-known​​ motion that already started)​​​‌ but keep the control/decision​ loop aware of their​‌ limitations.

Assistance will be​​ translated into planning actions,​​​‌ sharing the autonomy on​ a task (e.g., blending​‌ assistive torques with the​​ torques of the human),​​​‌ or visual suggestions to​ help an operator. Two​‌ challenges are particularly interesting:​​ the first is anticipating​​​‌ to compensate for delays,​ either in the actuation​‌ or in the communication;​​ the second is improving​​​‌ the prediction to consider​ unknowns (e.g., payloads) and​‌ contextual information (e.g., environment,​​ task constraints).

Multimodal models​​​‌

Our past algorithms for​ prediction of motion are​‌ limited because they only​​ consider motion data. We​​​‌ want to incorporate in​ the prediction contextual and​‌ multimodal information that we​​ can collect from other​​​‌ sensors or sources: 3-dimensional​ images of the situation,​‌ 360-cameras, operator's eye tracker,​​ sound, etc. We already​​​‌ showed that we can​ condition the motion primitives​‌ with additional information such​​ as goals and obstacles​​​‌ 49. A more​ general approach could consist​‌ of conditioning the prediction​​ to multimodal data that​​​‌ represent the context or​ the environment (e.g., cameras,​‌ point clouds) and language​​ instructions (e.g., in text​​​‌ form, using recent language​ models). A recent work​‌ by Google showed the​​ potential of combining language​​​‌ description and action tokenization,​ and it is a​‌ very promising way to​​ address contextual prediction 30​​​‌. In the past,​ we developed visual predictions​‌ of robot manipulation with​​ action labels 39 and​​​‌ multimodal predictions with visual​ images, speech and robot's​‌ end-effector trajectories 32,​​ but the challenges now​​​‌ are precise predictions that​ can be used in​‌ real-time control, scaling to​​ whole-body movements, and computationally​​​‌ “light” models.

Uncertainty and​ diversity

Interacting with humans​‌ in unstructured environments demands​​ that our robots adapt​​​‌ creatively to unforeseen situations​ and new users, often​‌ falling outside the typical​​ data distribution. While human​​​‌ operators play a pivotal​ role in adapting to​‌ these new situations, we​​ are well aware that​​​‌ models and policies may​ overly specialize in specific​‌ scenarios or motions or​​ make errors. To address​​​‌ this challenge, we propose​ two key strategies. First,​‌ we will integrate an​​ epistemic uncertainty quantification approach​​​‌ into all our methods.​ This will involve exploring​‌ research avenues such as​​ deep evidential regression 28​​​‌ and traditional ensembles. We​ are especially attentive to​‌ advancements in epistemic uncertainty​​ quantification for trajectory prediction,​​ adapting our approach accordingly.​​​‌ In particular, a robot‌ should not follow predictions‌​‌ that are deemed to​​ be too uncertain, which​​​‌ would likely lead to‌ a wrong behavior. Second,‌​‌ we will design algorithms​​ to automatically design or​​​‌ curate diverse datasets. Over‌ the past decade, we‌​‌ have largely contributed to​​ Quality Diversity algorithms 31​​​‌, 50, which‌ are versatile optimization techniques‌​‌ that seek a diverse​​ set of high-performing solutions​​​‌ to an optimization problem:‌ in particular, Mouret &‌​‌ Clune proposed MAP-Elites 46​​, which is now​​​‌ one of the most‌ common techniques in Quality‌​‌ Diversity and has originated​​ several follow-up work (tracked​​​‌ in this page).‌ In the coming years,‌​‌ we will harness and​​ refine these algorithms to​​​‌ generate a variety of‌ scenarios for the operators‌​‌ 34 and synthetic datasets​​ amenable to optimal control​​​‌ solutions (see Axis 1).‌ Part of this effort‌​‌ consists of developing suitable​​ methods and tools to​​​‌ make Quality Diversity applicable‌ to complex robotics control‌​‌ problems.

4 Application domains​​

The team members have​​​‌ been developing fruitful collaborations‌ with several potential end-users‌​‌ of their technologies, for​​ two main applications: physical​​​‌ assistance and teleoperation.

4.1‌ Physical assistance to improve‌​‌ ergonomics at work

We​​ have been collaborating with​​​‌ several companies and institutes,‌ mostly on the topic‌​‌ of estimating and improving​​ ergonomics using human-centered technologies,​​​‌ wearable sensors and cobotics‌ solutions. The most notable‌​‌ collaborations are with INRS​​ and CEA, with two​​​‌ PhD theses co-supervised by‌ P. Maurice, one co-supervised‌​‌ by S. Ivaldi and​​ one by J.-B. Mouret.​​​‌ In the next years,‌ our collaboration with CEA‌​‌ will be strengthened thanks​​ to the PEPR O2R​​​‌ (Organic Robotics). Notably, we‌ will apply the methods‌​‌ developed for human-aware and​​ anticipatory control (see Axis​​​‌ 1), online ergonomics‌ (see Axis 2)‌​‌ and motion prediction (see​​ Axis 3) to​​​‌ their exoskeletons. We will‌ also collaborate with the‌​‌ SHS team of CEA​​ to investigate ethical issues​​​‌ and social acceptance of‌ exoskeletons for physical assistance.‌​‌

We have been developing​​ several collaborations around the​​​‌ use of passive and‌ active exoskeletons. A great‌​‌ collaboration about passive exoskeletons​​ is with the University​​​‌ Hospital of Nancy (CHRU‌ Nancy). In the project‌​‌ ExoTurn, passive exoskeletons were​​ deployed in the Intensive​​​‌ Care Unit to alleviate‌ the physical stress of‌​‌ physicians in prone positioning​​ maneuvers. In the follow-up​​​‌ project ExoCare, we studied‌ whether passive exoskeletons could‌​‌ be a viable tool​​ to assist nurses during​​​‌ patients' bathing. In the‌ current project ExoSim, we‌​‌ want to analyze more​​ workstations and medical acts​​​‌ in the hospital, leveraging‌ our software for digital‌​‌ simulations of the human​​ workers (see Axis 2​​​‌). Our agenda, supported‌ by the CHRU staff,‌​‌ is to identify potential​​ existing exoskeletons readily available​​​‌ to conduct pilot studies‌ in situ (in the‌​‌ short term) and co-design​​ new ad-hoc exoskeletons (in​​​‌ the long term).

We‌ have been studying active‌​‌ exoskeletons to assist firefighters​​ and first responders in​​​‌ their activities. On one‌ side, we collaborated with‌​‌ the firefighters of Nancy​​​‌ (SDIS54), in the context​ of a LUE initiative​‌ led by P. Maurice.​​ On the other side,​​​‌ we have been collaborating​ with Safran, in the​‌ context of a DGA​​ Rapid project and then​​​‌ in the CIFRE thesis​ of A. Oliveira Souza,​‌ to develop controllers for​​ active exoskeletons for first​​​‌ responders in logistic operations.​ We applied with SDIS54​‌ and Safran to a​​ Horizon Europe call with​​​‌ a project to design​ a new exoskeleton solution​‌ for their use case:​​ since the proposal was​​​‌ rejected, we will re-submit​ to other calls and​‌ in the meantime, we​​ are funding this research​​​‌ & development activity internally.​ It is very important​‌ for our team because​​ we want to develop​​​‌ our active exoskeleton solution​ and have full control​‌ of its software and​​ low-level control. The methods​​​‌ developed in Axis 1​ will enable the design​‌ of controllers for manipulating​​ heavy payloads, which we​​​‌ did not address in​ the past.

In the​‌ short term, we want​​ to develop methods and​​​‌ devices for exoskeletons, to​ support the creation of​‌ X-hold (startup of the​​ team, currently enrolled in​​​‌ Inria Startup Studio) and​ transfer our technologies, and​‌ at the same time​​ to help our partners​​​‌ to deploy successfully exoskeletons​ in the field, providing​‌ recommendations and scientific assessment​​ of available solutions. In​​​‌ the long term, we​ want to make modular​‌ exoskeletons that are light​​ and affordable and can​​​‌ be ideal for our​ partners.

4.2 Remote teleoperation​‌ of robot avatars

We​​ started in 2023 a​​​‌ collaboration with ESA, notably​ with the visiting research​‌ period of S. Ivaldi​​ and J.-B. Mouret for​​​‌ 2 months at ESA/ESTEC​ in the HRI lab,​‌ hosted by T. Krueger​​ and G. Visentin. We​​​‌ started the procedure for​ signing a MOU to​‌ formalize the collaboration. We​​ are checking opportunities to​​​‌ join industrial consortia applying​ to ESA-funded space calls​‌ on specific robotics programs.​​ In the long term,​​​‌ we aim to transfer​ part of our software​‌ developments to their team,​​ to contribute to the​​​‌ software used in their​ missions, especially orbital maintenance​‌ and lunar exploration that​​ involve significant teleoperation. E.​​​‌ Mingo Hoffman worked on​ an ESA-funded project during​‌ his previous employment, and​​ he notably developed the​​​‌ controller of a European​ robot designed for orbital​‌ maintenance 45. The​​ teleoperation software will include​​​‌ whole-body controllers with the​ operator's anticipation and assistance​‌ (see Axis 1-3).​​

At the same time,​​​‌ we are interested in​ enabling humanoid robots to​‌ be used as avatars​​ for real-life missions. This​​​‌ spans several applications, from​ construction to exploration and​‌ intervention (pionnering work in​​ this area was done​​​‌ by IHMC 36).​ We have been collaborating​‌ with PAL Robotics, the​​ first European company commercializing​​​‌ humanoid robots, notably in​ the TIRREX project (Equipex​‌ Robotex2 via the CNRS)​​ to define upgrades for​​​‌ our Talos robot, and​ the Horizon Europe project​‌ euROBIN where we received​​ an upgrade of the​​​‌ Tiago robot. E. Mingo​ Hoffman was formerly employed​‌ as a researcher by​​ PAL, where he implemented​​ the control of their​​​‌ new humanoid Kangaroo. Our‌ former engineer L. Renaud‌​‌ is now working in​​ PAL. With the recent​​​‌ advent of several American,‌ Chinese and European humanoid‌​‌ robots in the global​​ market, we are now​​​‌ carefully tracking the developments‌ of humanoid platforms. Our‌​‌ approach to survive in​​ this research area is​​​‌ to develop robust and‌ generic methods that adapt‌​‌ to different robots, aiming​​ at non-specific algorithms and​​​‌ validating the methods on‌ as many platforms as‌​‌ possible.

5 Social and​​ environmental responsibility

5.1 Footprint​​​‌ of research activities

The‌ team is engaged in‌​‌ reducing its carbon footprint​​ by taking actions to​​​‌ reduce the number of‌ travels. Project meetings are‌​‌ carried out in remote,​​ when possible, and trains​​​‌ are the most preferable‌ form of travel in‌​‌ Europe.

5.2 Impact of​​ research results

Scientific Impact​​​‌

Our research program has‌ an impact on both‌​‌ the robotics and the​​ human motion analysis communities.​​​‌ In robotics, our main‌ focus is to address‌​‌ the pressing issues of​​ agility and human-awareness by​​​‌ harnessing the power of‌ machine learning and optimization-based‌​‌ control. Through our contributions,​​ we aim to propel​​​‌ the scientific community toward‌ realizing the vision of‌​‌ synergic whole-body human-robot connection,​​ might it be for​​​‌ exoskeletons or humanoid robot.‌ Our publication strategy mainly‌​‌ targets journals and conferences​​ of the robotics domain,​​​‌ such as T-RO, RA-L,‌ ICRA, IROS, Humanoids, HRI,‌​‌ etc. On the motion​​ analysis side, we aim​​​‌ to develop algorithms that‌ evaluate and optimize the‌​‌ ergonomics of specific motions,​​ be it with or​​​‌ without interaction with robotic‌ assistance (exoskeletons or cobots).‌​‌ This means collaborating with​​ and contributing to the​​​‌ biomechanics and occupational ergonomics‌ communities. For instance, we‌​‌ plan to present our​​ work at the annual​​​‌ congress of the Société‌ de Biomécanique (France) and‌​‌ to submit to renowned​​ biomechanics and ergonomics journals,​​​‌ such as Applied Ergonomics‌ and Computer Methods in‌​‌ Biomechanics and Biomedical Engineering.​​

Economic Impact

Our plans​​​‌ for economic impact evolve‌ in parallel with our‌​‌ research. Currently, our plans​​ are:

  • Transfer IP, knowledge​​​‌ and one patent (still‌ in preparation for submission)‌​‌ about a semi-passive exoskeleton​​ to the upcoming startup​​​‌ X-hold, led by‌ our former engineers Raphael‌​‌ Bousigues and Raphael Lartot​​ , currently enrolled in​​​‌ the Inria Startup Studio‌ program. This plan is‌​‌ already in action.

    In​​ 2025, notably:

    • Thanks to​​​‌ the project EXOCODESIM, we‌ made significant progress in‌​‌ the design of one​​ semi-passive exoskeleton and one​​​‌ active exoskeleton.
    • We started‌ in June 2025 the‌​‌ process to submit a​​ patent about the semi-passive​​​‌ exoskeleton, with the Inria‌ STIP and Patent Office.‌​‌ We were not expecting​​ such huge delays: as​​​‌ of now, the patent‌ is not yet filed.‌​‌
  • Transfer IP, knowledge and​​ one patent 27 to​​​‌ the startup Bleu Robotics‌, co-funded by Jean-Baptiste‌​‌ Mouret , Serena Ivaldi​​ and Benoit Berkoukchi, currently​​​‌ incubated at Station F.‌ This plan is already‌​‌ in action.

    In 2025,​​ notably:

    • Thanks to the​​​‌ projects euROBIN and ATOR,‌ we finalized our system‌​‌ and device for robot​​​‌ pointing. We started in​ May 2025 the process​‌ to submit the patent,​​ with the Inria STIP​​​‌ and Patent Office. We​ wanted to submit the​‌ patent in September and​​ later submit the journal​​​‌ paper using the system​ to a Special Issue​‌ of Science Robotics in​​ October 2025. However, the​​​‌ patent process was longer​ than we estimated. Ultimately,​‌ the patent was submitted​​ in November 2025 and​​​‌ we were able to​ submit later the journal​‌ paper for another T-RO​​ special issue. The patent​​​‌ is still in the​ window of examination, so​‌ at this moment it​​ is not yet accepted,​​​‌ and the paper is​ under review.
  • Increase the​‌ TRL of our teleoperation​​ solution, to make it​​​‌ robust, safe and usable​ by our partners in​‌ DGA (they funded our​​ project ATOR), and possibly​​​‌ test it at their​ premises. This is a​‌ short/medium term plan.
  • Finalize​​ our demonstrations for La​​​‌ Poste, in the context​ of the PhD thesis​‌ of Mathis Antonetti ,​​ focused on automatising the​​​‌ sorting and transport of​ boxes and bags with​‌ robots. This is a​​ short term plan.
  • Consolidate​​​‌ our collaboration with ESA,​ to make them use​‌ our software for their​​ robotics experiments and missions​​​‌ and to be involved​ in the latter. This​‌ is a long term​​ plan.

Societal Impact

The​​​‌ common thread among our​ target domains is the​‌ overarching goal of enhancing​​ the safety and ergonomic​​​‌ conditions of workers. This​ imperative resonates across various​‌ industries, particularly given the​​ aging workforce and the​​​‌ trend toward extending retirement​ ages in many nations.​‌ Our research endeavors address​​ this multifaceted challenge from​​​‌ two key angles:

  • Ergonomics:​ We develop solutions that​‌ promote better ergonomics to​​ safeguard the physical health​​​‌ of workers. Our efforts​ will also involve the​‌ advancement of exoskeletons, designed​​ to alleviate muscle strain​​​‌ and reduce physical exertion​ on workers.
  • Remote Operation:​‌ We aim to enhance​​ safety by implementing remote​​​‌ operation capabilities, safeguarding workers​ from hazardous environments such​‌ as exposure to chemicals,​​ asbestos, hostile situations, space​​​‌ exploration, and more.

It​ is noteworthy that the​‌ acceptance of these robotic​​ technologies as tools and​​​‌ protective measures for workers​ often surpasses that of​‌ autonomous robots designed to​​ replace human labor 33​​​‌. Additionally, these technologies​ are more readily integrated​‌ into existing workflows, as​​ they empower human operators​​​‌ while giving them control​ over crucial decisions.

We​‌ stand by the idea​​ that robotics solutions should​​​‌ be designed to help​ humans at work and​‌ assist them to improve​​ their working conditions and​​​‌ their health. We are​ currently involved in these​‌ actions:

  • Firefighters: the firefighters​​ also handle more than​​​‌ 200,000 traffic accidents a​ year (2021), and we​‌ identified that they would​​ benefit from the help​​​‌ of exoskeletons to extricate​ people from damaged vehicles,​‌ which involve moving and​​ keeping in place heavy​​​‌ machinery in unusual positions,​ and to carry large​‌ weights, like stretchers with​​ injured patients. We are​​​‌ actively collaborating with the​ SDIS 54 (firefighters in​‌ Meurthe et Moselle, our​​ region) for evaluating existing​​ exoskeletons and analyzing their​​​‌ gestures, and in the‌ long term eventually developing‌​‌ ad-hoc exoskeletons.
  • Hospital: we​​ have a longstanding collaboration​​​‌ with the University Hospital‌ of Nancy. In the‌​‌ past, we helped the​​ physicians of the Intensive​​​‌ Care Unit by providing‌ them exoskeletons to assist‌​‌ their gestures of prone​​ positioning during the COVID​​​‌ pandemic. We followed up‌ by evaluating if exoskeletons‌​‌ could assist nurses in​​ bed bathing. We are​​​‌ currently involved in the‌ ExoSim project to assess‌​‌ the benefit of exoskeletons​​ in some particular gestures​​​‌ in the departments of‌ laundry, logistic and restaurant.‌​‌ To accelerate the study,​​ we are collecting data​​​‌ of different workstations to‌ evaluate the potential of‌​‌ simulation tools to virtually​​ test the exoskeleton's assistance​​​‌ and impact on the‌ human body. The developed‌​‌ software, if validated by​​ lab studies with human​​​‌ participants, has the potential‌ to accelerate the evaluation,‌​‌ test and deployment of​​ exoskeletons in all settings​​​‌ where field tests are‌ difficult (the hospital is‌​‌ only one of those).​​

    In 2025 notably:

    • We​​​‌ made progress in the‌ agreements between Inria, CNRS,‌​‌ UL and CHRU de​​ Nancy, concerning the legal​​​‌ framework that allows our‌ team to record data‌​‌ about the gestures of​​ the workers at the​​​‌ Hospital Premises. Notably, we‌ succeeded in having a‌​‌ meeting with the DPOs​​ of Inria and CHRU​​​‌ de Nancy, who agreed‌ on the terms for‌​‌ data collection, processing and​​ sharing. Unfortunately, the contract​​​‌ is not yet finalized.‌
    • We obtained approval from‌​‌ COERLE for the experiments​​ at CHRU de Nancy.​​​‌
    • We conducted two field‌ observation visits at the‌​‌ CHRU de Nancy, in​​ laundry and restauration &​​​‌ logistics, to observe the‌ work carried out on‌​‌ a daily basis, discuss​​ with workers and evaluate​​​‌ the technical feasibility of‌ the data collection.
    • We‌​‌ prepared the Ethics protocols​​ for lab evaluation studies​​​‌ for specific gestures that‌ we identified as potential‌​‌ candidates for exoskeletons.

5.3​​ Ethics issues

We are​​​‌ well aware of ethics‌ and technology acceptance issues‌​‌ related to the robotics​​ applications we are studying.​​​‌ In the past, we‌ led the Ethics Deliverable‌​‌ of the European Project​​ AnDy, and we studied​​​‌ the principles of “ethically‌ aligned design”', and we‌​‌ have considered technology acceptance​​ models in the design​​​‌ of experimental material for‌ our human-robot interaction experiments‌​‌ 40, 41,​​ 42. These methods​​​‌ are now regularly used‌ in our research.

In‌​‌ the context of the​​ PEPR O2R, we are​​​‌ intensifying collaborations with SHS‌ experts, from psychology to‌​‌ anthropology. We are planning​​ several experiments of human-robot​​​‌ interaction in lab and‌ in the wild to‌​‌ study the acceptance of​​ robots in different contexts​​​‌ of use, and investigate‌ open questions in the‌​‌ design of controllers and​​ behavior for human-robot interaction​​​‌ that account for ethics‌ issues related to safety,‌​‌ anxiety, personalization, errors, and​​ user empowerment.

In 2025,​​​‌ notably:

  • Serena Ivaldi ,‌ Elisabetta Zibetti , Fabio‌​‌ Amadio co-authored a paper​​ on Trust in HRI,​​​‌ stemming from a multidiciplinary‌ work in PEPR O2R‌​‌ with anthropologists, psychologists, sociologists​​​‌ and roboticists 24.​
  • Serena Ivaldi participated to​‌ a training day about​​ Ethics in AI &​​​‌ Robotics organized by GDR​ Robotique and PEPR.
  • We​‌ submitted 7 ethics protocols​​ for approbation to COERLE.​​​‌ Of those, 3 are​ not yet approved /​‌ they are still being​​ processed.

5.4 Engagement for​​​‌ women in science

The​ team promotes equal opportunities​‌ for women and minorities.​​ Female researchers of the​​​‌ team are frequently invited​ to present their research​‌ and career to girls​​ and young women, and​​​‌ are engaged in the​ many activities organized by​‌ the institutes (Inria, CNRS)​​ and the University of​​​‌ Lorraine. Some examples:

  • Pauline​ Maurice participated in an​‌ event organized in Paris​​ by CNRS Sciences Informatiques,​​​‌ to present the work​ of female researchers in​‌ digital science to high​​ school students (several hundreds​​​‌ of students visited the​ event).
  • Pauline Maurice and​‌ Serena Ivaldi participate to​​ the GT Parité of​​​‌ GDR Robotique.
  • Serena Ivaldi​ organized a communication campaign​‌ on Linkedin to promote​​ the female senior/junior researchers​​​‌ in the team through​ a series of interviews,​‌ during the Ada Lovelace​​ Day.

6 Highlights of​​​‌ the year

  • Serena Ivaldi​ was keynote speaker at​‌ the international conference IEEE​​ Telepresence 2025.
  • Presentation and​​​‌ robotics & AI demos​ for the Minister Clara​‌ Chappaz, in January 2025,​​ in occasion of the​​​‌ inauguration of the Cluster​ AI project ENACT.

6.1​‌ Awards

  • Julian Miller Award​​ by the SPECIES society​​​‌ for Jean-Baptiste Mouret .​ The Julian Francis Miller​‌ Award is given for​​ important contributions to the​​​‌ algorithmic exploration and embodiment​ of evolution, development and/or​‌ learning.

7 Latest software​​ developments, platforms, open data​​​‌

New open-source projects on​ HUCEBOT's GitHub:

7.1 Latest software​ developments

7.1.1 Exo_HMI

  • Keywords:​‌
    GUI (Graphical User Interface),​​ Man-machine interfaces
  • Functional Description:​​​‌
    Web-based exoskeleton visualization and​ control software
  • News of​‌ the Year:
    This is​​ a new software of​​​‌ 2025, developed in the​ context of the "pre-maturation"​‌ project EXOCODESIM (COMS@N call).​​
  • Contact:
    Raphael Lartot

7.1.2​​​‌ ShelfyInteractExtractor

  • Name:
    ShelfyInteractExtractor
  • Keywords:​
    Omnidirectional video, Video analysis,​‌ Video annotation, 2D, 3D​​
  • Scientific Description:

    The scientific​​​‌ context of the project​ is the acquisition of​‌ a dataset in order​​ to anticipate human-robot interaction.​​​‌

    The goal was to​ use a recording platform​‌ (a mobile or static​​ robot) in a social​​​‌ environment (with people around)​ and to automatically detect​‌ whether these people are​​ interacting (in this case:​​​‌ whether people are taking​ something from the robot's​‌ tray). Using this automatic​​ a posteriori detection and​​​‌ input signals (sequence of​ images of a person,​‌ pose sequences (2D/3D skeleton),​​ etc.), the goal is​​​‌ to anticipate before the​ interaction whether it will​‌ occur and when.

    In​​ order to extract and​​​‌ preprocess this data, a​ set of tools has​‌ been developed in ShelfyInteractExtractor.​​ Some of the tools​​ are dedicated to extraction​​​‌ from the raw formats‌ recorded on the robot,‌​‌ some to automatic processing,​​ some to manual correction​​​‌ of annotations, and finally,‌ others to task execution‌​‌ for compliance with GDPR​​ rules.

  • Functional Description:

    The​​​‌ features are implemented as‌ Python scripts and can‌​‌ be executed sequentially, either​​ manually or automatically:

    Extraction:​​​‌ - Extraction of low-resolution‌ images from rosbags, detection‌​‌ of people, and removal​​ of “empty” passages directly​​​‌ in the rosbags -‌ Extraction of high-resolution images,‌​‌ multichannel audio, LiDAR point​​ clouds, and other synchronized​​​‌ data directly from rosbags‌ - Extraction of 360‌​‌ images from an omnidirectional​​ camera from a video​​​‌ file (mkv) - Automatic‌ temporal synchronization of 360‌​‌ images using a flashing​​ LED and a DTW​​​‌ algorithm

    Processing: - People‌ detection - Tracking and‌​‌ segmentation (SAM2) - Pose​​ estimation (ViTPose and Sapiens)​​​‌ - Face detection and‌ extraction of the best‌​‌ images for each tracked​​ person - Embedding extraction​​​‌ for facial recognition -‌ Automatic detection of physical‌​‌ interaction with the recording​​ platform (robot)

    Visualization: -​​​‌ Tool for viewing synchronized‌ data (images, 360 images,‌​‌ LiDAR, etc.) - Tool​​ for manual track correction​​​‌ - Tool for viewing‌ extracted faces and filtering‌​‌ by similarity to a​​ target face: applications for​​​‌ compliance with GDPR rules‌ (requests for deletion by‌​‌ individuals)

  • News of the​​ Year:
    This is a​​​‌ new software of 2025,‌ in support of the‌​‌ experiments of PEPR O2R​​ AS3.
  • Contact:
    Raphael Lorenzo​​​‌
  • Partner:
    CEA-List

7.1.3 Interact360‌

  • Name:
    Interact360
  • Keywords:
    Omnidirectional‌​‌ camera, Visual tracking
  • Scientific​​ Description:

    The goal is​​​‌ to address limitations in‌ tracking and segmenting objects‌​‌ (in this case, people)​​ using recent methods such​​​‌ as SAM2 in the‌ context of equirectangular images.‌​‌

    To do this, the​​ software tracks individuals one​​​‌ by one using a‌ moving window.

    The project‌​‌ originated from a desire​​ to anticipate human-robot interaction.​​​‌ To this end, the‌ software also contains scripts‌​‌ that enable feature extraction​​ as a form of​​​‌ preprocessing (such as 2D‌ pose estimation).

  • Functional Description:‌​‌

    The software comprises several​​ steps:

    Extraction: extraction of​​​‌ images from videos. Detection/segmentation/tracking:‌ using several steps, robust‌​‌ detection of people is​​ performed and tracks are​​​‌ initialized with SAM2. A‌ mobile tracking window allows‌​‌ them to be tracked​​ even when they pass​​​‌ behind the camera (at‌ the edge of the‌​‌ image).

    Other processing: -​​ 2D pose estimation with​​​‌ ViTPose/Sapiens - Automatic detection‌ of people's interaction with‌​‌ a moving/fixed target (based​​ on the intersection of​​​‌ segmentation masks)

  • News of‌ the Year:
    This is‌​‌ a new software of​​ 2025, developed for the​​​‌ experiments of PEPR O2R‌ AS3.
  • Contact:
    Raphael Lorenzo‌​‌
  • Partner:
    CEA-List

7.1.4 OpenSoT​​

  • Name:
    Open Stack of​​​‌ Tasks
  • Keywords:
    Robotics, Optimal‌ control, Optimization, Motion control‌​‌
  • Functional Description:
    OpenSoT is​​ developed to simplify the​​​‌ creation and resolution of‌ complex planning and control‌​‌ problems tailored to robotics.​​ The library permits combining​​​‌ multiple tasks and constraints‌ to set up a‌​‌ control problem in the​​ form of a Quadratic​​​‌ Programming problem, which is‌ then resolved by a‌​‌ solver using different strategies​​​‌ to handle priorities between​ tasks.
  • News of the​‌ Year:
    In 2025, the​​ OpenSOT project was forked​​​‌ from the old version​ used in IIT, and​‌ it is now fully​​ handled by Enrico Mingo​​​‌ Hoffman on the HUCEBOT​ github, together with the​‌ help of Olivier Rochel​​ (SED). It was "cleaned"​​​‌ by some dependencies, some​ parts of code were​‌ improved, notably in collisions.​​
  • URL:
  • Contact:
    Enrico​​​‌ Mingo Hoffman

7.1.5 g1pilot​

  • Name:
    ROS 2 package​‌ for Unitree G1 humanoid​​ robots.
  • Keywords:
    Humanoid Robotics,​​​‌ Telerobotics
  • Functional Description:
    G1Pilot​ is an open‑source ROS​‌ 2 package for Unitree​​ G1 humanoid robots. Basically​​​‌ is made to leave​ the robot lower body​‌ to the controller of​​ unitree while providing all​​​‌ necessary tools to control​ the upper body and​‌ teleoperate the robot. It​​ exposes two complementary control​​​‌ Joint (low‑level, per‑joint) and​ Cartesian (end‑effector) and continuously​‌ publishes core robot state​​ for monitoring and visualization​​​‌ in RViz.
  • News of​ the Year:
    This is​‌ a new software of​​ 2025, motivated by the​​​‌ arrival of the G1​ robot.
  • URL:
  • Contact:​‌
    Jean-Baptiste Mouret

7.1.6 AstroViz​​

  • Name:
    Real-time data visualization​​​‌ suite for ROS 2​ robotic missions
  • Keywords:
    Telerobotics,​‌ Robotics
  • Functional Description:

    AstroViz​​ is the ultimate real-time​​​‌ data visualization suite for​ ROS 2 robotic missions.​‌ Built from the ground​​ up for flexibility, clarity,​​​‌ and performance, AstroViz empowers​ roboticists, engineers, and field​‌ operators with a unified​​ interface to monitor, control,​​​‌ and debug complex systems​ in real-time.

    (1) All-in-one​‌ visualization: From GPS and​​ LiDAR to camera feeds,​​​‌ robot state, and motor​ health, AstroViz integrates multiple​‌ views into a cohesive​​ and modern GUI.

    (2)​​​‌ High-performance: Docker-based deployment with​ GPU support ensures smooth​‌ operation even in data-intensive​​ environments.

    (3) Field-proven: Whether​​​‌ you’re launching autonomous vehicles,​ drones, or ground robots,​‌ AstroViz is your visual​​ command center.

    Looking for​​​‌ a ROS 2 tool​ that goes beyond raw​‌ data and helps you​​ make real-time decisions in​​​‌ the field? AstroViz is​ built for that.

  • News​‌ of the Year:
    This​​ is a new software​​​‌ of 2025, developed in​ the context of the​‌ ATOR project.
  • URL:
  • Contact:
    Jean-Baptiste Mouret

7.2​​​‌ New platforms

  • Participants: Fabio​ Amadio, Raphael Lorenzo​‌, Serena Ivaldi.​​

    Shelfy: mobile robot​​​‌ for service robotics experiments​ and data collection in​‌ the wild. Design and​​ building funded by PEPR​​​‌ O2R AS3.

  • Participants: Raphael​ Bousigues, Raphael Lartot​‌, Nicolas Beaufort,​​ Alexandre Oliveira Souza,​​​‌ Pauline Maurice, Jean-Baptiste​ Mouret, Serena Ivaldi​‌.

    Exoskeletons: prototypes​​ for assistance of the​​​‌ upper-limbs: semi-passive and active.​ Design and building funded​‌ by EXOCODESIM, euROBIN, PEPR​​ O2R PI3.

  • Participants: Anna​​​‌ Bucchieri, Pauline Maurice​, Serena Ivaldi.​‌

    Acquisition of commercial exoskeletons​​ for the EXOSIM project:​​​‌ HyperShell, MATE, HyQ, OmniSuit​.

7.3 Open data​‌

  • HUI360: a dataset for​​ predicting interactions of humans​​​‌ with a mobile service​ robot, in the wild​‌ (submitted to CVPR 2026)​​ – dataset under review​​​‌ by recherche.data.gouv.fr (assigned DOI:​ https://doi.org/10.57745/3EE8W4).

8 New​‌ results

8.1 Exoskeletons and​​ ergonomics

Motion prediction for​​ active exoskeleton control

Participants:​​​‌ Alexandre Oliveira Souza,‌ Serena Ivaldi, Pauline‌​‌ Maurice.

This work​​ is a joint PhD​​​‌ thesis with Safran (supervisors:‌ Jordane Grenier and Christophe‌​‌ Guettier), and with Francois​​ Charpillet from INRIA Nancy.​​​‌

Occupational exoskeletons are a‌ promising solution to physically‌​‌ assist people in strenuous​​ tasks, such as load​​​‌ carrying. Compared to passive‌ exoskeletons, active exoskeletons are‌​‌ more powerful and more​​ versatile, so they can​​​‌ offer a better assistance‌ for a wide variety‌​‌ of tasks. However, their​​ interaction with the user​​​‌ remains a problem currently‌ because there is usually‌​‌ a delay in the​​ assistance, and the selection​​​‌ of the assistance remains‌ often manual. Hence motion‌​‌ prediction could be a​​ promising way to improve​​​‌ exoskeleton control by anticipating‌ the required assistance.

In‌​‌ a previous work (published​​ in 2024), we proposed​​​‌ a novel controller in‌ which gravity compensation (standard‌​‌ in active upper-limb exoskeleton​​ control) is complemented by​​​‌ a predictive impedance term.‌ Thus an impedance control‌​‌ is added, in which​​ the reference trajectory is​​​‌ the predicted human arm‌ trajectory. We used an‌​‌ MLP (multi-layer-perceptron) as motion​​ predictor, given that it​​​‌ requires only a limited‌ amount of trainign data,‌​‌ which is crucial in​​ the context of human-exoskeleton​​​‌ interaction. In 2024, we‌ evaluated this novel controller‌​‌ with respect to transparency​​ (i.e., when no load​​​‌ is manipulated). This year,‌ we extended the study‌​‌ to the actual use​​ case of load manipulation​​​‌ in a repetitive task.‌ This first required designing‌​‌ a new upper-limb bi-manual​​ exoskeleton prototype on which​​​‌ we implemented our controller‌ (the one used in‌​‌ the previous experiment was​​ not dimensioned for load​​​‌ manipulation). We then conducted‌ an experiment in which‌​‌ human participants performed a​​ repetitive load manipulation task​​​‌ without the exoskeleton, with‌ the exoskeleton using a‌​‌ baseline gravity compensation controller,​​ and with the exoskeleton​​​‌ using our predictive controller.‌ The experiment showed that‌​‌ the predictive controller enables​​ to slightly reduce some​​​‌ side effect induced by‌ the baseline gravity compensation‌​‌ controller, owing to the​​ anticipation of the required​​​‌ assistance. While small, this‌ effect was perceived by‌​‌ the participants who consistently​​ prefered the predictive controller​​​‌ than the baseline one.‌

This work was presented‌​‌ in the PhD thesis​​ of Alexandre Oliveira Souza,​​​‌ defended in September 2025.‌ A journal paper is‌​‌ also in preparation.

Human-exoskeleton​​ simulation

Participants: Alexandre Oliveira​​​‌ Souza, Anna Bucchieri‌, Francois Charpillet,‌​‌ Serena Ivaldi, Pauline​​ Maurice.

This work​​​‌ is parly funded by‌ a joint PhD thesis‌​‌ with Safran (supervisors: Jordane​​ Grenier and Christophe Guettier),​​​‌ and by the LUE‌ ExoSim project (PI: Serena‌​‌ Ivaldi ).

Building on​​ the team expertise and​​​‌ tools on physics-based digital‌ human simulation, we have‌​‌ been developing a simulation​​ tool that enables to​​​‌ simulate human-exoskeleton interaction. Both‌ the human and the‌​‌ exoskeletons are modeled as​​ polyarticulated kinematic chains (including​​​‌ dynamics properties), and controlled‌ to generate desired motions.‌​‌ The digital human is​​ animated using a quadratic​​​‌ programming control, standard in‌ humanoid robotics. The exoskeleton‌​‌ is controlled using any​​​‌ controller that we want​ to test. Using physics-based​‌ simulation allows to simulate​​ the interaction force between​​​‌ both agents, and hence​ to generate motions that​‌ account for this interaction​​ force. Such simulation has​​​‌ a strong potential to​ help design and assess​‌ exoskeletons (mechanical design and​​ control), since it enables​​​‌ to evaluate biomechanical effects​ on the human without​‌ the need for time-consuming​​ human experiment. It can​​​‌ be used to select​ suitable exoskeleton for a​‌ given task (before an​​ actual validation with real​​​‌ experiment), or in an​ optimization-based design process (e.g.,​‌ co-design).

One challenge in​​ such simulation is to​​​‌ model the human-exoskeleton physical​ interaction. We proposed to​‌ use a visco-elastic (spring​​ damper) contact model at​​​‌ the attachment points. This​ is a suitable compromise​‌ between the reality of​​ the non-rigid contact, and​​​‌ the complexity and computational​ cost of models such​‌ as finite elements. We​​ proposed to identify suitable​​​‌ parameters of the model​ using Bayesian optimization to​‌ match experimental data. We​​ showed that this simulation​​​‌ can be used to​ estimate the assistance of​‌ an upper-limb exoskeleton on​​ human physical effort (joint​​​‌ torque.)

This work was​ presented in the PhD​‌ thesis of Alexandre Oliveira​​ Souza , and presented​​​‌ in two international conferences​ 23, 17

Physics-based​‌ simulation for human motion​​ analysis

Participants: Anna Bucchieri​​​‌, Serena Ivaldi,​ Pauline Maurice.

This​‌ work is funded by​​ the LUE ExoSim project​​​‌ (PI: Serena Ivaldi ).​

In this work, we​‌ used the same basis​​ for physics-based simulation of​​​‌ human motion as in​ the previous section. The​‌ goal is to develop​​ a tool to quantitatively​​​‌ analyze human physical ergonomics​ (motion and internal effort)​‌ of occupational activities, recorded​​ with motion capture. Most​​​‌ existing approaches rely on​ inverse kinematics and inverse​‌ dynamics analysis, from motion​​ capture data. Here, we​​​‌ proposed to use an​ integrated approach that directly​‌ computes the internal forces​​ from the motion capture​​​‌ data, using quadratic programming​ control. This technique has​‌ the advantage that the​​ recorded motion can then​​​‌ be used as a​ reference, but effects of​‌ physical assistance, such as​​ exoskeletons, can be taken​​​‌ into account (i.e., the​ motion can be modified​‌ by the assistance).

This​​ year, we validated the​​​‌ accuracy of the estimated​ motion and internal forces​‌ of our approach against​​ the standard inverse kinematics​​​‌ - inverse dynamics approach.​ We used an existing​‌ dataset (within the team)​​ to compare the performance​​​‌ of both approaches. We​ showed that while the​‌ accuracy of our approach​​ was slightly worse than​​​‌ the gold standard, it​ was still suitable for​‌ ergonomics analysis. However our​​ approach is currently limited​​​‌ to motion with fixed​ feet. We are currently​‌ working towards extending it​​ to motion with feet​​​‌ displacements.

This work was​ published (and presented) as​‌ an international conference paper​​ 13, and also​​​‌ presented in a national​ biomechanics conference 21.​‌

Analysis of human motion​​ variability in an manual​​​‌ task

Participants: Célian Becques​, Pauline Maurice.​‌

This work is a​​ collaboration with INRS (National​​ Institute for Occupational Health),​​​‌ in particular with Jonathan‌ Savin

Human motion is‌​‌ intrisically variable, owing to​​ multiple inter- and intra-individual​​​‌ factors (e.g., morphology, expertise,‌ fatigue...). At the kinematic‌​‌ level, this leads to​​ adopting different postures when​​​‌ performing a gesture. While‌ this is known, this‌​‌ phenomenon is largely ignored​​ in workstations assessment and​​​‌ design. Workstation design is‌ often done using software‌​‌ tools that allow to​​ simulate a human at​​​‌ work, to evaluate biomechanical‌ risks (in particular risk‌​‌ of developing work-related musculoskeletal​​ disorders (WMSD)). But these​​​‌ tools enable to simulate‌ one single way of‌​‌ performing a task, ignoring​​ variability. Actually, there exists​​​‌ very little quantitative knowledge‌ about motion variability in‌​‌ occupational tasks, let alone​​ models to predict and​​​‌ simulate it in a‌ realistic way. This work‌​‌ is part of a​​ research line aiming at​​​‌ modeling and characterizing human‌ motor variability in occupational‌​‌ tasks, and providing tools​​ to account for it​​​‌ in workstation design. This‌ is especially important with‌​‌ the increase of robotic-assisted​​ workstations, where extra care​​​‌ should be taken such‌ that the robot does‌​‌ not reduce natural human​​ motion variability, which would​​​‌ be detrimental to WMSD‌ risk reduction.

The work‌​‌ conducted this year is​​ a first step in​​​‌ this project. We analysed‌ data from a human‌​‌ subject experiment conducted in​​ a previous year. In​​​‌ this experiment, participants had‌ to perform a manual‌​‌ trajectory tracking task repeatedly,​​ and in different pace​​​‌ conditions. This year, we‌ performed kinematic analysis of‌​‌ the collected data, to​​ evaluate the variability in​​​‌ upper-limb posture, and its‌ impact on WMSDs risk.‌​‌ We showed that motor​​ variability is indeed present,​​​‌ and started investigating the‌ factors affecting it. Importantly,‌​‌ we showed that standard​​ ergonomics assessment scores are​​​‌ significantly affected by this‌ variability. This means that‌​‌ conducting a risk analysis​​ on one trial (one​​​‌ way of performing the‌ task) only, while ignoring‌​‌ variability, may lead to​​ an under-estimation of the​​​‌ risk.

This work has‌ been accepted for a‌​‌ presentation in a conference​​ taking place in 2026,​​​‌ and a journal paper‌ is currently in preparation.‌​‌

Adaptive control of collaborative​​ robots for preventing musculoskeletal​​​‌ disorders

Participants: Aya Yaacoub‌, Pauline Maurice.‌​‌

This work is part​​ of Pauline Maurice's ANR​​​‌ JCJC ROOIBOS project. It‌ has been conducted in‌​‌ collaboration with Francis Colas​​ and Vincent Thomas from​​​‌ the Larsen team.

The‌ use of collaborative robots‌​‌ in direct physical collaboration​​ with humans constitutes a​​​‌ possible answer to musculoskeletal‌ disorders: not only can‌​‌ they relieve the worker​​ from heavy loads, but​​​‌ they could also guide‌ them towards more ergonomic‌​‌ postures. In this context,​​ one objective of the​​​‌ ROOIBOS Project is to‌ build adaptive robot strategies‌​‌ that are optimal regarding​​ productivity but also the​​​‌ long-term health and comfort‌ of the human worker,‌​‌ by adapting the robot​​ behavior to the human's​​​‌ physiological state.

To do‌ so, in a previous‌​‌ work (published in 2023),​​ we proposed to use​​​‌ Partially Observable Markov Decision‌ Processes (POMDP) to compute‌​‌ a robot policy taking​​​‌ into account the long-term​ consequences of the biomechanical​‌ demands on the human​​ worker's joints (joint loading)​​​‌ and to distribute the​ efforts among the different​‌ joints during the execution​​ of a repetitive task.​​​‌ This approach also allows​ to take into account​‌ the uncertainty of the​​ human postural reaction to​​​‌ a robot action (i.e.,​ the whole-body posture of​‌ the human, and hence​​ the internal efforts, cannot​​​‌ be predicted with certainty​ just knowing the robot​‌ motion).

This year, we​​ have been designing an​​​‌ experiment to validate the​ effectiveness of the proposed​‌ POMDP-based planning approach for​​ fatigue mitigation with human​​​‌ subjects, in a human-robot​ comanipulation task. Due to​‌ various human difficulties, we​​ were not able to​​​‌ complete the experiment this​ year. However, we have​‌ prepared the protocol, and​​ part of the set-up.​​​‌ The actual experiment is​ planned to be carried​‌ out in 2026.

This​​ work (the approach, without​​​‌ the results) is presented​ in the PhD thesis​‌ of Aya Yaacoub, who​​ will be defending in​​​‌ early 2026.

Influence of​ non-biological motion pattern on​‌ human-robot physical collaboration

Participants:​​ Pauline Maurice.

This​​​‌ work is in collaboration​ with the Action Lab​‌ of Northeastern University, USA​​ (PI: Dagmar Sternad, PhD​​​‌ student: Mahdi Edraki, PostDoc:​ Hélène Serré).

In a​‌ previous work we showed​​ that when physically collaborating​​​‌ with a robot, the​ interaction is easier for​‌ the human when the​​ robot moves according to​​​‌ a human-like motion pattern​ (compared to a non-human-like​‌ pattern). However the motion​​ profile of a robot​​​‌ can be constrained by​ the task or the​‌ environment and then cannot​​ necessarily follow a human-like​​​‌ pattern. In this work,​ we conducted an experimental​‌ user-study to assess if​​ and how humans can​​​‌ improve their performance when​ collaborating with a robot​‌ that moves according to​​ a non-human-like pattern. 41​​​‌ subjects practiced a collaborative​ task with a robot​‌ over 3 days, with​​ and without augmented feedback,​​​‌ with various motion profiles.​ We showed that humans​‌ can improve even with​​ a non-biological profile, but​​​‌ only when augmented feedback​ is provided. Then, we​‌ analyzed possible features of​​ motion that could explain​​​‌ the difficulty of following​ a non-biological movement pattern.​‌ We showed that the​​ difference between biological and​​​‌ non-biological angular velocity is​ a good predictor of​‌ the difficulty of following​​ the trajectory.

This work​​​‌ was presented in a​ journal paper that has​‌ been accepted and will​​ be published early 2026.​​​‌

8.2 Robots in remote​ and hazardous environments

Flying​‌ in air ducts

Participants:​​ Jean-Baptiste Mouret, Thomas​​​‌ Martin.

Air ducts​ are integral to modern​‌ buildings but are challenging​​ to access for inspection.​​​‌ Small quadrotor drones (teleoperated​ or autonomous) offer a​‌ potential solution, as they​​ can navigate both horizontal​​​‌ and vertical sections and​ smoothly fly over debris.​‌ However, hovering inside air​​ ducts is problematic due​​​‌ to the airflow generated​ by the rotors, which​‌ recirculates inside the duct​​ and destabilizes the drone.​​​‌

In this work, we​ mapped the aerodynamic forces​‌ that affect a hovering​​ drone in a duct​​ using a robotic setup​​​‌ and a force/torque sensor.‌ Based on the collected‌​‌ aerodynamic data, we identified​​ a recommended position for​​​‌ stable flight, which is‌ not the center of‌​‌ a circular duct. We​​ then developped a neural​​​‌ network-based positioning system that‌ leverages low-cost time-of-flight sensors.‌​‌

By combining these aerodynamic​​ insights and the data-driven​​​‌ positioning system, we showed‌ how to improve the‌​‌ stability of a small​​ quadrotor drone (here, 180​​​‌ mm) inside small air‌ ducts (down to 350‌​‌ mm diameter) and fly​​ autonomously over 2 m.​​​‌

This work was advertized‌ with a press release‌​‌ and covered by a​​ few French media (e.g.,​​​‌ France 3 Lorraine /‌ Soir 3, Les‌​‌ Échos, Science&Avenir, Planete​​ Robots, L'Usine Nouvelle​​​‌, ...).

Publication: 9‌ (npj Robotics) - [video]‌​‌

8.3 Robot learning, AI​​ & control

Safe Bimanual​​​‌ Teleoperation with Language-Guided Collision‌ Avoidance

Participants: Dionis Totsila‌​‌, Serena Ivaldi,​​ Jean-Baptiste Mouret, Clemente​​​‌ Donoso, Enrico Mingo‌ Hoffman.

Teleoperating precise‌​‌ bimanual manipulations in cluttered​​ environments is challenging for​​​‌ operators, who often struggle‌ with limited spatial perception‌​‌ and difficulty estimating distances​​ between target objects, the​​​‌ robot's body, obstacles, and‌ the surrounding environment. To‌​‌ address these challenges, local​​ robot perception and control​​​‌ should assist the operator‌ during teleoperation.

We introduced‌​‌ a safe teleoperation system​​ that enhances operator control​​​‌ by preventing collisions in‌ cluttered environments through the‌​‌ combination of immersive VR​​ control and voice-activated collision​​​‌ avoidance. Using HTC Vive‌ controllers, operators directly control‌​‌ a bimanual mobile manipulator,​​ while spoken commands such​​​‌ as "avoid the yellow‌ tool" trigger visual grounding‌​‌ and segmentation to build​​ 3D obstacle meshes. These​​​‌ meshes are integrated into‌ a whole-body controller to‌​‌ actively prevent collisions during​​ teleoperation.

Experiments in static,​​​‌ cluttered scenes demonstrated that‌ our system significantly improves‌​‌ operational safety without compromising​​ task efficiency. Publication: 18​​​‌ (IEEE Telepresence conference 2025)‌

Extremum Flow Matching for‌​‌ Offline Goal Conditioned Reinforcement​​ Learning

Participants: Quentin Rouxel​​​‌, Serena Ivaldi,‌ Jean-Baptiste Mouret, Clemente‌​‌ Donoso.

Imitation learning​​ is a promising approach​​​‌ for enabling generalist capabilities‌ in humanoid robots (for‌​‌ prediction of motion, for​​ autonomous policies or for​​​‌ shared control), but its‌ scaling is fundamentally constrained‌​‌ by the scarcity of​​ high-quality expert demonstrations. This​​​‌ limitation can be mitigated‌ by leveraging suboptimal, open-ended‌​‌ play data, often easier​​ to collect and offering​​​‌ greater diversity.

We build‌ upon recent advances in‌​‌ generative modeling, specifically Flow​​ Matching, an alternative to​​​‌ Diffusion models. We introduce‌ a method for estimating‌​‌ the minimum or maximum​​ of the learned distribution​​​‌ by leveraging the unique‌ properties of Flow Matching,‌​‌ namely, deterministic transport and​​ support for arbitrary source​​​‌ distributions. We apply this‌ method to develop several‌​‌ goal-conditioned imitation and reinforcement​​ learning algorithms based on​​​‌ Flow Matching, where policies‌ are conditioned on both‌​‌ current and goal observations.​​ We explore and compare​​​‌ different architectural configurations by‌ combining core components, such‌​‌ as critic, planner, actor,​​ or world model, in​​​‌ various ways. We evaluated‌ our agents on the‌​‌ OGBench benchmark and analyzed​​​‌ how different demonstration behaviors​ during data collection affect​‌ performance in a 2D​​ non-prehensile pushing task.

Furthermore,​​​‌ we validated our approach​ on real hardware by​‌ deploying it on the​​ Talos humanoid robot to​​​‌ perform complex manipulation tasks​ based on high-dimensional image​‌ observations, featuring a sequence​​ of pick-and-place and articulated​​​‌ object manipulation in a​ realistic kitchen environment. Experimental​‌ videos and code are​​ available at: www —​​​‌ Publication 15 (IEEE Humanoids​ conference 2025) – Selected​‌ Oral presentation.

AHMP: Agile​​ Humanoid Motion Planning with​​​‌ Contact Sequence Discovery

Participants:​ Ioannis Tsikelis, Evangelos​‌ Tsiatsianas, Serena Ivaldi​​, Enrico Mingo Hoffman​​​‌.

Planning agile whole-body​ motions for legged and​‌ humanoid robots is a​​ fundamental requirement for enabling​​​‌ dynamic tasks such as​ running, jumping, and fast​‌ reactive maneuvers. In this​​ work, we present AHMP,​​​‌ a multi-contact motion planning​ framework based on bi-level​‌ optimization that integrates a​​ contact sequence discovery technique,​​​‌ using the Mixed-Distribution Cross-Entropy​ Method (CEM-MD), and an​‌ efficient trajectory optimization scheme,​​ which parameterizes the robot’s​​​‌ poses and motions in​ the tangent space of​‌ SE(3). AHMP permits the​​ automatic generation of feasible​​​‌ contact configurations, with associated​ whole-body dynamic transitions. We​‌ validate our approach on​​ a set of challenging​​​‌ agile motion planning tasks​ for humanoid robots, demonstrating​‌ that contact sequence discovery​​ combined with tangent space​​​‌ parameterization leads to highly​ dynamic motion plans while​‌ remaining computationally efficient. –​​ Publication 19 (IEEE Humanoids​​​‌ conference 2025) – Selected​ Oral presentation.

Learning to​‌ Walk with Hybrid Serial-Parallel​​ Linkages: a Case Study​​​‌ on the Kangaroo Robot​

Participants: Fabio Amadio,​‌ Serena Ivaldi, Enrico​​ Mingo Hoffman.

Humanoid​​​‌ robots increasingly adopt hybrid​ serial-parallel kinematics to improve​‌ structural stiffness, mass distribution,​​ and impact robustness. However,​​​‌ these mechanisms introduce complexity​ associated with simulation and​‌ control, which impacts algorithms​​ for Reinforcement Learning (RL)​​​‌ based locomotion. We studied​ the case of an​‌ RL end-to-end pipeline that​​ trains walking policies for​​​‌ Kangaroo, a 72 degrees​ of freedom biped whose​‌ legs contain several hybrid​​ serial-parallel chains, without kinematic​​​‌ simplifications. Training is performed​ using the Isaac Lab​‌ framework, leveraging the Isaac​​ Sim built-in constraint capabilities.​​​‌ An ablation study on​ the observation state is​‌ carried out to find​​ evidence in the use​​​‌ of redundant information from​ the measured state of​‌ the robot, i.e., using​​ the passive and/or active​​​‌ joint measurements available in​ Kangaroo. A set of​‌ trained policies is validated​​ in MuJoCo, demonstrating a​​​‌ degree of robustness to​ the Simto-Sim gap, provided​‌ that the equality-constraint stiffness​​ and other simulation parameters​​​‌ are properly tuned. The​ closed-loop behaviors of the​‌ tested policies successfully transfer​​ in most cases, despite​​​‌ differences in how contacts​ and constraints are modeled​‌ across the two simulators.​​ Furthermore, we analyzed how​​​‌ minor differences in the​ action rate penalty weight​‌ used during training can​​ deeply affect the locomotion​​​‌ stability of the resulting​ policies when deployed in​‌ a different simulation environment.​​ – Publication 20 (SII​​​‌ 2025)

Vision-language models for​ joint attention in human-robot​‌ interaction

Participants: Dionis Totsila​​, Jean-Baptiste Mouret,​​ Clemente Donoso, Serena​​​‌ Ivaldi.

Humanoid robots‌ need joint attention mechanisms‌​‌ to collaborate efficiently with​​ humans, for example, to​​​‌ precisely identify points of‌ common interest that are‌​‌ critical for manipulation tasks,​​ balancing, or the execution​​​‌ of a desired task.‌ To this end, the‌​‌ robot needs to understand​​ human instructions about tasks,​​​‌ objects, and locations; predict‌ 3D points of interest‌​‌ in the shared environment;​​ and clearly communicate its​​​‌ prediction to the human,‌ engaging in a dialogue‌​‌ to iteratively refine its​​ prediction until the human​​​‌ is satisfied and the‌ robot can proceed with‌​‌ its task. In this​​ work, we leverage foundation​​​‌ models in a modular‌ framework that enables the‌​‌ identification and iterative refinement​​ of 3D points of​​​‌ interest from human instructions.‌ Our architecture, named LaserAttention,‌​‌ lifts the semantic reasoning​​ of off-the-shelf 2D Vision-Language​​​‌ Models (VLMs) into precise‌ 3D contact frames by‌​‌ integrating geometric segmentation, achieving​​ a median spatial error​​​‌ of 3.09 cm, significantly‌ outperforming end-to-end baselines. We‌​‌ introduce a physically grounded​​ legibility interface: a custom​​​‌ 2-DoF laser that projects‌ the robot’s intended contact‌​‌ point into the shared​​ workspace. This mechanism externalizes​​​‌ the robot’s internal reasoning‌ before action, enabling a‌​‌ dialogue where users can​​ visually verify and iteratively​​​‌ refine spatial goals. Extensive‌ experiments on two different‌​‌ humanoid platforms (TALOS and​​ TIAGo++) and a user​​​‌ study demonstrate that this‌ approach allows for zero-shot‌​‌ generalization while significantly reducing​​ cognitive workload and enhancing​​​‌ trust compared to standard‌ arm-pointing gestures. – A‌​‌ paper about this work​​ is currently submitted to​​​‌ a journal.

8.4 Human-robot‌ interaction

What Can Robots‌​‌ Teach Us About Trust​​ and Reliance? An interdisciplinary​​​‌ dialogue between Social Sciences‌ and Social Robotics

Participants:‌​‌ Serena Ivaldi, Maria​​ Elisabetta Zibetti, Fabio​​​‌ Amadio.

This is‌ a paper written by‌​‌ several members of the​​ PEPR O2R AS3 project,​​​‌ as part of our‌ efforts to increase the‌​‌ multi-disciplinarity of our research​​ and strenghten the collaboration​​​‌ between robotics and SHS.‌ As robots find their‌​‌ way into more and​​ more aspects of everyday​​​‌ life, questions around trust‌ are becoming increasingly important.‌​‌ What does it mean​​ to trust a robot?​​​‌ And how should we‌ think about trust in‌​‌ relationships that involve both​​ humans and non-human agents?​​​‌ While the field of‌ Human-Robot Interaction (HRI) has‌​‌ made trust a central​​ topic, the concept is​​​‌ often approached in fragmented‌ ways. At the same‌​‌ time, established work in​​ sociology, where trust has​​​‌ long been a key‌ theme, is rarely brought‌​‌ into conversation with developments​​ in robotics. This article​​​‌ argues that we need‌ a more interdisciplinary approach.‌​‌ By drawing on insights​​ from both social sciences​​​‌ and social robotics, we‌ explore how trust is‌​‌ shaped, tested and made​​ visible. Our goal is​​​‌ to open up a‌ dialogue between disciplines and‌​‌ help build a more​​ grounded and adaptable framework​​​‌ for understanding trust in‌ the evolving world of‌​‌ human-robot interaction. – Publication​​ 24 (8th International Workshop​​​‌ on Human-Friendly Robotics 2025,‌ HFR 2025).

A 360°‌​‌ Egocentric Dataset and Baselines​​​‌ for Human-Robot Interaction Anticipation​

Participants: Raphael Lorenzo,​‌ Serena Ivaldi, Fabio​​ Amadio.

This work​​​‌ is done in the​ context of the PEPR​‌ O2R AS3 project, in​​ particular in the collaboration​​​‌ with CEA, where we​ want to develop methods​‌ for anticipating when humans​​ want to interact with​​​‌ the robot. To this​ end, we collected the​‌ largest dataset for human-robot​​ interaction anticipation in the​​​‌ wild (1M pre-processed annotations,​ including detailed 2D poses,​‌ facial keypoints, and segmentation​​ masks) and we introduced​​​‌ it with its set​ of baselines. The dataset​‌ was collected from our​​ mobile robot Shelfy, in​​​‌ the wild, over multiple​ days within a 3-month​‌ period, and in several​​ environments, capturing natural, spontaneous​​​‌ behaviors from both passersby​ and users, and encompassing​‌ a diverse range of​​ individuals. This variety enables​​​‌ evaluating and improving the​ generalization capabilities of interaction​‌ anticipation models. – This​​ work is currently submitted​​​‌ as a conference paper.​

Real-Time Spatially Aware Human​‌ Motion Prediction: The PADEON​​ Approach

Participants: Serena Ivaldi​​​‌, Fabio Amadio,​ Michael Vanuzzo.

This​‌ work is done in​​ the context of the​​​‌ visiting period of Michael​ Vanuzzo, where he developed​‌ a novel deep learning​​ framework that incorporates spatial​​​‌ semantics into HMP using​ a graph-based architecture. We​‌ contributed with experimental design​​ of two human-robot collaborative​​​‌ scenarios inspired by assembly​ tasks where the prediction​‌ is used. – This​​ work is currently submitted​​​‌ as a conference paper.​

9 Bilateral contracts and​‌ grants with industry

9.1​​ Bilateral contracts with industry​​​‌

PhD grant (CIFRE) with​ SAFRAN

Participants: Alexandre Oliveira​‌ Souza, Pauline Maurice​​, Serena Ivaldi,​​​‌ Francois Charpillet.

Collaboration​ with Jordane Grenier (Safran)​‌ and Christophe Guettier (Safran).​​

The thesis is funded​​​‌ by Safran to develop​ the AI-based control of​‌ their hybrid exoskeleton, based​​ on the one developed​​​‌ in the DGA-Rapid project​ ASMOA. It consists in​‌ developing methods to predict​​ the amount of assistance​​​‌ that is needed by​ the human in tasks​‌ involving payload manipulation.

PhD​​ with CEA

Participants: Raphael​​​‌ Lorenzo, Serena Ivaldi​.

This contract concerns​‌ the IP related to​​ the PhD of Raphael​​​‌ Lorenzo , co-supervised by​ Serena Ivaldi and Bertrand​‌ Luvison in CEA. The​​ PhD is funded by​​​‌ PEPR O2R AS3; it​ started on October 2024.​‌ The contract is under​​ negotiation.

PhD with​​​‌ CEA

Participants: Quentin Rolland​, Jean-Baptiste Mouret.​‌

This contract concerns the​​ compensation and IP related​​​‌ to the PhD of​ Quentin Rolland , co-supervised​‌ by Jean-Baptiste Mouret and​​ Fabrice Mayran de Chamisso​​​‌ in CEA. The PhD​ is funded by CEA;​‌ it started on November​​ 2024. The contract is​​​‌ under negotiation.

Convention​ d'accueil with CHRU Nancy​‌

Participants: Serena Ivaldi,​​ Pauline Maurice, Anna​​​‌ Bucchieri.

This contract​ concerns the agreement between​‌ CHRU, UL and Inria,​​ to authorise our team​​​‌ members to enter the​ CHRU premises to conduct​‌ experiments in the context​​ of the ExoSim project​​​‌ (scientific project funded by​ LUE). The project started​‌ on July 2024. The​​ contract is under negotiation​​.

9.2 Bilateral grants​​​‌ with industry

None.

10‌ Partnerships and cooperations

10.1‌​‌ International initiatives

10.1.1 Associate​​ Teams in the framework​​​‌ of an Inria International‌ Lab or in the‌​‌ framework of an Inria​​ International Program

  • Title:
    LEG-AI​​​‌ – Learning and Generative‌ AI methods for Control‌​‌ of Legged Robots
  • Partner​​ Institution(s):
    University College London​​​‌ (UCL), London, UK
  • Date/Duration:‌
    2025–2028
  • Additional info/keywords:
    legged‌​‌ locomotion, AI, control
  • Description:​​
    Building on a longstanding​​​‌ track record of previous‌ joint publications and projects,‌​‌ the strategic collaboration LEG-AI​​ between the Inria HUCEBOT​​​‌ team and the robotics‌ & AI researchers of‌​‌ the Department of Computer​​ Science of the University​​​‌ College London (UCL) seeks‌ to push the boundaries‌​‌ of legged locomotion and​​ develop adaptive, autonomous control​​​‌ strategies for both quadruped‌ and humanoid robots in‌​‌ challenging environments. Established in​​ 2025, this collaboration which​​​‌ is driven by the‌ use of state-of-the-art methods‌​‌ in deep learning, generative​​ AI, vision transformers, and​​​‌ evolutionary algorithms, promotes knowledge‌ sharing, methodologically and experimentally,‌​‌ and fosters collaboration. Such​​ results are reached through​​​‌ a structured program of‌ research visits between the‌​‌ centre Inria de l’Université​​ de Lorraine and UCL​​​‌ which enhance the condition‌ to share the teams’s‌​‌ specialized expertise and strengthen​​ experimental evaluation by sharing​​​‌ complementary robotics platforms.

10.2‌ International research visitors

10.2.1‌​‌ Visits of international scientists​​

Inria Visiting Researcher
Meghan​​​‌ Huber
  • Status
    : Assistant‌ Professor
  • Institution of origin:‌​‌
    University of Massachusetts Amherst]​​
  • Country:
    USA
  • Dates:
    July​​​‌ and December 2025 (2‌ months)
  • Context of the‌​‌ visit:
    Initiating a long-term​​ research collaboration with Pauline​​​‌ Maurice, on exoskeletons and‌ human movement in physical‌​‌ human-robot interaction.
  • Mobility program/type​​ of mobility:
    Research stay​​​‌ (funded by Inria "Visiting‌ Researcher" fellowship)
Other international‌​‌ visits to the team​​
Michael Vanuzzo
  • Status
    PhD​​​‌
  • Institution of origin:
    University‌ of Padova
  • Country:
    Italy‌​‌
  • Dates:
    March–August 2025
  • Context​​ of the visit:
    Collaboration​​​‌ on prediction algorithms for‌ human-robot collaboration.
  • Mobility program/type‌​‌ of mobility:
    Erasmus program​​ to have a visiting​​​‌ period abroad during the‌ PhD, funded by the‌​‌ University of Padova.
Luca​​ Rossini
  • Status
    post-Doc
  • Institution​​​‌ of origin:
    Istituto Italiano‌ di Tecnologia
  • Country:
    Italy‌​‌
  • Dates:
    January 2025 (2​​ weeks)
  • Context of the​​​‌ visit:
    Continue research collaboration‌ on optimal control for‌​‌ legged systems under the​​ euROBIN and MeRLin projects.​​​‌
  • Mobility program/type of mobility:‌
    Research stay and lecture‌​‌ funded by euROBIN EU​​ Project
Francesco Ruscelli
  • Status​​​‌
    post-Doc
  • Institution of origin:‌
    Istituto Italiano di Tecnologia‌​‌
  • Country:
    Italy
  • Dates:
    January​​ 2025 (2 weeks)
  • Context​​​‌ of the visit:
    Continue‌ research collaboration on optimal‌​‌ control for legged systems​​ under the euROBIN and​​​‌ MeRLin projects.
  • Mobility program/type‌ of mobility:
    Research stay‌​‌ and lecture funded by​​ euROBIN EU Project
Evangelos​​​‌ Tsiatsianas
  • Status
    Intern (Master)‌
  • Institution of origin:
    University‌​‌ of Patras
  • Country:
    Greece​​
  • Dates:
    September 2025 to​​​‌ February 2026 (6 months)‌
  • Context of the visit:‌​‌
    Master thesis on optimal​​ control on manifold for​​​‌ legged systems under the‌ MeRLin project.
  • Mobility program/type‌​‌ of mobility:
    Internship (funded​​ by ORION Program)

10.2.2​​​‌ Visits to international teams‌

Enrico Mingo Hoffman
  • Visited‌​‌ institution:
    Dipartimento di Ingegneria​​​‌ Informatica, Automatica e Gestionale​ at the Sapienza University​‌ of Rome
  • Country:
    Italy​​
  • Dates:
    March and November​​​‌ 2025 (2 weeks and​ 1 week)
  • Context of​‌ the visit:
    Continue the​​ collaboration with the Robotics​​​‌ department on themes concerning​ optimal control for legged​‌ systems. Invited lecture on​​ “Modeling and Control of​​​‌ Hybrid Serial–Parallel Floating-Base Systems.”​
  • Mobility program/type of mobility:​‌
    Research stay and lecture,​​ partially funded by the​​​‌ MeRLin project.
Serena Ivaldi​ , Dionis Totsila ,​‌ Raphael Lorenzo , Ioannis​​ Tsikelis and Fabio Amadio​​​‌
  • Visited institution:
    Department of​ Robotics at University College​‌ London
  • Country:
    UK
  • Dates:​​
    December 2025 (1 week)​​​‌
  • Context of the visit:​
    collaboration with Prof. Valerio​‌ Modugno in the context​​ of the joint team​​​‌ LEG-AI (Inria equipe associée).​
  • Mobility program/type of mobility:​‌
    Research stay and planned​​ experiments, funded by LEG-AI.​​​‌
Research stays abroad
Serena​ Ivaldi and Jean-Baptiste Mouret​‌
  • Visited institution:
    Stanford University​​
  • Country:
    California, USA
  • Dates:​​​‌
    10–21 August 2025
  • Context​ of the visit:
    PEPR​‌ O2R is funding international​​ mobilities to develop collaborations​​​‌ with prestigious Universities and​ Institutes.
  • Mobility program/type of​‌ mobility:
    (sabbatical, internship, research​​ stay, lecture…) Research stay,​​​‌ with two lectures at​ the Stanford Seminar and​‌ several visits of different​​ labs in Computer Science,​​​‌ Aerospace Engineering, Biomechanics.
Guillaume​ Bellegarda
  • Visited institution:
    Lund​‌ University
  • Country:
    Sweden
  • Dates:​​
    03–21 November 2025
  • Context​​​‌ of the visit:
    Invited​ visiting scholar for the​‌ ELLIIT 2025 Robot Learning​​ Focus Period .
  • Mobility​​​‌ program/type of mobility:
    (sabbatical,​ internship, research stay, lecture…)​‌ Research stay, with two​​ invited talks: one research​​​‌ seminar and one course​ lecture.

10.3 European initiatives​‌

10.3.1 Horizon Europe

euROBIN​​

Participants: Serena Ivaldi,​​​‌ Jean-Baptiste Mouret, Enrico​ Mingo Hoffman, Guillaume​‌ Bellegarda, Dionis Totsila​​, Phani Teja Singamaneni​​​‌, Leonardo Bertelli,​ Alexandre Oliveira Souza.​‌

  • Title:
    European ROBotics and​​ AI Network of Excellence​​​‌
  • Duration:
    July 2022 –​ December 2026
  • Partners:
    • Institut​‌ National De Recherche En​​ Informatique Et Automatique (Inria),​​​‌ France
    • C.R.E.A.T.E. Consorzio Di​ Ricerca Per L'energia L​‌ Automazione E Le Tecnologie​​ Dell'elettromagnetismo (C.R.E.A.T.E.), Italy
    • Pal​​​‌ Robotics Slu (Pal Robotics),​ Spain
    • Kungliga Tekniska Hoegskolan​‌ (KTH), Sweden
    • Institut Jozef​​ Stefan (JSI), Slovenia
    • Fraunhofer​​​‌ Gesellschaft Zur Forderung Der​ Angewandten Forschung Ev (Fraunhofer),​‌ Germany
    • Fundacion Tecnalia Research​​ & Innovation (Tecnalia), Spain​​​‌
    • Technische Universitaet Muenchen (TUM),​ Germany
    • Dhl Express Spain​‌ Sl, Spain
    • Commissariat A​​ L Energie Atomique Et​​​‌ Aux Energies Alternatives (CEA),​ France
    • Interuniversitair Micro-Electronica Centrum​‌ (Imec), Belgium
    • Teknologisk Institut​​ (Danish Technological Institute), Denmark​​​‌
    • Universiteit Twente (Universiteit Twente),​ Netherlands
    • Asea Brown Boveri​‌ Sa (ABB), Spain
    • Ecole​​ Polytechnique Federale De Lausanne​​​‌ (EPFL), Switzerland
    • Matador Industries​ As, Slovakia
    • Deutsches Zentrum​‌ Fur Luft - Und​​ Raumfahrt Ev (DLR), Germany​​​‌
    • Ist-Id Associacao Do Instituto​ Superior Tecnico Para A​‌ Investigacao E O Desenvolvimento​​ (Ist Id), Portugal
    • Università​​​‌ Di Pisa (Unipi), Italy​
    • Fundingbox Accelerator Sp Zoo​‌ (FBA), Poland
    • Universitaet Bremen​​ (Ubremen), Germany
    • Fondazione Istituto​​​‌ Italiano Di Tecnologia (IIT),​ Italy
    • Karlsruher Institut Fuer​‌ Technologie (KIT), Germany
    • Eidgenoessische​​ Technische Hochschule Zuerich (ETH​​​‌ Zürich), Switzerland
    • Ceske Vysoke​ Uceni Technicke V Praze​‌ (CVUT), Czechia
    • Orebro University,​​ Sweden
    • Centre National De​​ La Recherche Scientifique (CNRS),​​​‌ France
    • Volkswagen Aktiengesellschaft, Germany‌
    • Siemens Aktiengesellschaft, Germany
    • Sorbonne‌​‌ Université, France
    • Universidad De​​ Sevilla, Spain
  • Inria contact:​​​‌
    Serena Ivaldi
  • Coordinator:
    Prof.‌ Dr. Alin Albu-Schäffer (DLR)‌​‌
  • Summary:

    As robots are​​ entering unstructured environments with​​​‌ a large variety of‌ tasks, they will need‌​‌ to quickly acquire new​​ abilities to solve them.​​​‌ Humans do so very‌ effectively through a variety‌​‌ of methods of knowledge​​ transfer – demonstration, verbal​​​‌ explanation, writing, the Internet.‌ In robotics, enabling the‌​‌ transfer of skills and​​ software between robots, tasks,​​​‌ research groups, and application‌ domains will be a‌​‌ game changer for scaling​​ up the robot abilities.​​​‌

    euROBIN therefore proposes a‌ threefold strategy: First, leading‌​‌ experts from the European​​ robotics and AI research​​​‌ community will tackle the‌ questions of transferability in‌​‌ four main scientific areas:​​ 1) boosting physical interaction​​​‌ capabilities, to increase safety‌ and reliability, as well‌​‌ as energy efficiency 2)​​ using machine learning to​​​‌ acquire new behaviors and‌ knowledge about the environment‌​‌ and the robot and​​ to adapt to novel​​​‌ situations 3) enabling robots‌ to represent, exchange, query,‌​‌ and reason about abstract​​ knowledge 4) ensuring a​​​‌ human-centric design paradigm, that‌ takes the needs and‌​‌ expectations of humans into​​ account, making AI-enabled robots​​​‌ accessible, usable and trustworthy.‌

    Second, the relevance of‌​‌ the scientific outcomes will​​ be demonstrated in three​​​‌ application domains that promise‌ to have substantial impact‌​‌ on industry, innovation, and​​ civil society in Europe.​​​‌ 1) robotic manufacturing for‌ a circular economy 2)‌​‌ personal robots for enhanced​​ quality of life 3)​​​‌ outdoor robots for sustainable‌ communities. Advances are made‌​‌ measurable by collaborative competitions.​​

    Finally, euROBIN will create​​​‌ a sustainable network of‌ excellence to foster exchange‌​‌ and inclusion. Software, data​​ and knowledge will be​​​‌ exchanged over the EuroCore‌ repository, designed to become‌​‌ a central platform for​​ robotics in Europe.

    The​​​‌ vision of euROBIN is‌ a European ecosystem of‌​‌ robots that share their​​ data and knowledge and​​​‌ exploit their diversity to‌ jointly learn to perform‌​‌ the endless variety of​​ tasks in human environments.​​​‌

10.4 National initiatives

10.4.1‌ PEPR O2R: AS3

Participants:‌​‌ Serena Ivaldi, Jean-Baptiste​​ Mouret, Enrico Mingo​​​‌ Hoffman, Pauline Maurice‌, Guillaume Bellegarda.‌​‌

  • Program:
    PEPR
  • Project acronym:​​
    AS3
  • Project title:
    Decision,​​​‌ Apprentissage et Interaction Sociale‌
  • Duration:
    January 2024 –‌​‌ December 2031
  • Coordinator:
    Serena​​ Ivaldi
  • Local coordinator:
    Serena​​​‌ Ivaldi
  • Abstract:
    The major‌ scientific challenge of this‌​‌ structuring action is to​​ lay the foundations for​​​‌ new society-centered decision-making, learning,‌ and interaction algorithms. We‌​‌ have identified four key​​ challenges that will lie​​​‌ at the heart of‌ the scientific development of‌​‌ this project: human anticipation​​ and prediction, multimodal interaction,​​​‌ learning during interactions, and‌ trust. Our approach to‌​‌ addressing these challenges is​​ to design and conduct​​​‌ joint field observation studies‌ carried out by experts‌​‌ in robotics and social​​ sciences. The joint analysis​​​‌ of these field studies‌ will have an impact‌​‌ on the design of​​ new theories, models, and​​​‌ algorithms, taking into account‌ the human and societal‌​‌ aspects of these challenges.​​​‌ In the first part​ of the project, the​‌ consortium will focus on​​ mobile manipulators, using platforms​​​‌ readily available within the​ consortium to conduct experiments​‌ with humans in public​​ spaces and workplaces. In​​​‌ the second part of​ the project, the consortium​‌ will broaden its scope​​ of investigation to wearable​​​‌ robots, with a higher​ degree of embodiment and​‌ physical interaction. The objective​​ is to inform the​​​‌ development of platforms in​ PI1, PI2, and PI3,​‌ and to identify bidirectional​​ links with AS1, AS2,​​​‌ and AS4.

10.4.2 PEPR​ O2R: PI3

Participants: Serena​‌ Ivaldi, Pauline Maurice​​.

  • Program:
    PEPR
  • Project​​​‌ acronym:
    PI3
  • Project title:​
    ASSISTMOV
  • Duration:
    January 2024​‌ – December 2031
  • Coordinator:​​
    Franck Geffard (CEA)
  • Local​​​‌ coordinator:
    Serena Ivaldi
  • Abstract:​
    The integrated PI3 project​‌ “ASSISTMOV,” composed of a​​ multidisciplinary team in engineering​​​‌ and Human and Social​ Sciences (HSS), targets the​‌ use case of assistive​​ robotics for movement assistance​​​‌ for people with disabilities.​ Through the development of​‌ a range of exoskeletons​​ (for both lower and​​​‌ upper limbs), this project​ aims to achieve a​‌ disruptive technology enabling fluid​​ interaction that is robust​​​‌ across a wide variety​ of environments and use​‌ cases, from rehabilitation to​​ everyday life. The project​​​‌ will follow the philosophy​ proposed within this PEPR,​‌ whose goal is to​​ rethink robot design from​​​‌ hardware to software in​ order to promote social​‌ adaptation and inclusion. Centered​​ on a holistic vision​​​‌ of use within its​ ecosystem, this innovative approach​‌ integrating HSS will question​​ the relevance of existing​​​‌ and projected technological directions,​ whether for upper-limb (UL)​‌ or lower-limb (LL) applications.​​ The objectives are to​​​‌ propose socially adapted robotic​ demonstrators (Challenge 1) while​‌ ensuring fluid interaction (Challenge​​ 3), based on a​​​‌ hardware and software architecture​ that is robust across​‌ a variety of environments​​ and use cases (Challenge​​​‌ 2).

10.4.3 ANR: OSTENSIVE​

Participants: Serena Ivaldi,​‌ Enrico Mingo Hoffman.​​

  • Program:
    ANR
  • Project acronym:​​​‌
    OSTENSIVE
  • Project title:
    Ostensive​ Human-Robot Interaction
  • Duration:
    April​‌ 2025 – April 2028​​
  • Coordinator:
    Mohamed Chetouani (Sorbonne​​​‌ Université)
  • Local coordinator:
    Serena​ Ivaldi
  • Abstract:
    When humans​‌ demonstrate a task to​​ another human or agent,​​​‌ they go beyond merely​ manipulating the targeted object​‌ (instrumental action) to add​​ to their actions ostensive​​​‌ communicative cues such as​ eye gaze and/or modulations​‌ of the demonstrations in​​ the space–-time dimensions (belief–directed​​​‌ action). This modulation results​ in behaviors that might​‌ appear to be sub–optimal,​​ such as pause, repetition​​​‌ and exaggeration, but they​ are provided to communicate​‌ additional information. Recent research​​ in Cognitive Science addressed​​​‌ this challenge of communication​ in action. Similarly, when​‌ robots have to perform​​ actions, there is a​​​‌ need for mechanisms of​ communication in action allowing​‌ to combine instrumental and​​ belief-directed actions. In robotics,​​​‌ this is known as​ the instantiation of legible​‌ robot motion (transparency through​​ motion) by which a​​​‌ robot communicates its intent​ to a human observer.​‌ OSTENSIVE will provide novel​​ solutions to study and​​​‌ develop human-robot interaction systems​ that are conceptually human​‌ centric by explicitly combining​​ instrumental and belief-directed dimensions​​ at key stages such​​​‌ as human behavior perception,‌ human/robot motion representations, robot‌​‌ motion synthesis and simulation​​ to real transfer. We​​​‌ will consider several approaches‌ for (de)coupling instrumental and‌​‌ belief-directed actions by leveraging​​ research in cognitive science​​​‌ and exploiting multi-task learning‌ in order to explicitly‌​‌ consider dual components of​​ human and robot actions.​​​‌

10.4.4 ANR: BUCOLYC

Participants:‌ Jean-Baptiste Mouret, Thomas‌​‌ Martin.

  • Program:
    ANR​​
  • Project acronym:
    BUCOLYC
  • Project​​​‌ title:
    Papillons et drones‌ en conditions de vol‌​‌ confiné : aérodynamique, biomimétisme​​ et IA au service​​​‌ du contrôle et de‌ la stabilisation
  • Duration:
    September‌​‌ 2023 – August 2027​​
  • Coordinator:
    Mickaël Bourgoin
  • Local​​​‌ coordinator:
    Jean-Baptiste Mouret
  • Abstract:‌
    While drone technology has‌​‌ matured for open-air flight,​​ confined flight remains a​​​‌ major challenge, due to‌ the aerodynamic interference induced‌​‌ by the complex couplings​​ between the drone itself​​​‌ and the surrounding walls,‌ which cause severe flight‌​‌ disturbances. This renders the​​ usual unmanned aerial vehicles​​​‌ (UAV) stabilization controls inoperative,‌ and considerably reduces maneuverability.‌​‌ Our project aims to​​ address this challenge by​​​‌ combining aerodynamic, biomimetic and‌ machine learning approaches to‌​‌ improve UAV control and​​ stability in confined, near-wall​​​‌ environments. To achieve this‌ ambitious goal, our multidisciplinary‌​‌ consortium brings together experts​​ in robotics and biorobotics,​​​‌ fluid mechanics and entomologists,‌ as well as an‌​‌ industrial partner (XTim) recognized​​ for its leadership in​​​‌ the market for biomimetic‌ flapping-wing drones.

10.4.5 Inria-AID‌​‌ (DGA): ATOR

Participants: Jean-Baptiste​​ Mouret, Serena Ivaldi​​​‌, Konstantinos Tsakonas,‌ Clemente Donoso.

  • Program:‌​‌
    Convention Inria-DGA
  • Project acronym:​​
    ATOR
  • Project title:
    Assisted​​​‌ Tele-Operation of Robots
  • Duration:‌
    January 2024 –- December‌​‌ 2028
  • Coordinator:
    Jean-Baptiste Mouret​​
  • Abstract:
    The ATOR project​​​‌ aims at leveraging artificial‌ intelligence algorithms to make‌​‌ it easier to teleoperate​​ robots (typically mobile manipulators).​​​‌ The main idea is‌ to exploit a dataset‌​‌ of expert demonstrations to​​ guide the hand of​​​‌ a non-expert, helping to‌ understand in real-time “what‌​‌ would an expert do​​ in that situation”. The​​​‌ project will propose novel,‌ uncertainty-aware trajectory prediction algorithms,‌​‌ as well as demonstrations​​ with the robots of​​​‌ the team.

10.4.6 ANR:‌ MERLIN

Participants: Enrico Mingo‌​‌ Hoffman, Fabio Amadio​​, Ioannis Tsikelis,​​​‌ Serena Ivaldi.

  • Program:‌
    ANR JCJC
  • Project acronym:‌​‌
    MERLIN
  • Project title:
    Multi-limbed​​ Robots empowered by whole-body​​​‌ Loco-manipulation.
  • Duration:
    April 2024‌ – October 2028
  • Coordinator:‌​‌
    Enrico Mingo Hoffman
  • Summary:​​
    The MeRLin project aims​​​‌ to advance robotics for‌ hazardous and physically demanding‌​‌ industrial tasks by enabling​​ multi-limbed robots to operate​​​‌ safely and effectively in‌ unstructured, dynamic environments. It‌​‌ proposes a robot-agnostic framework​​ centered on whole-body planning​​​‌ and control, allowing robots‌ to coordinate locomotion and‌​‌ manipulation through contact-rich interactions.​​ The project integrates model-based​​​‌ optimization methods, which ensure‌ stability and feasibility, with‌​‌ deep reinforcement learning, which​​ provides adaptability and robustness​​​‌ to environmental uncertainty. This‌ learning-augmented approach supports efficient‌​‌ long-term planning, fast-reacting control,​​ and improved learning performance,​​​‌ aligning with growing industrial‌ interest in humanoid and‌​‌ multi-limbed robots.

10.4.7 ANR:​​ ROOIBOS

Participants: Pauline Maurice​​​‌.

  • Program:
    ANR JCJC‌
  • Project acronym:
    ROOIBOS
  • Project‌​‌ title:
    User-Specific Adaptation of​​​‌ Collaborative Robot Motion for​ Improved Ergonomics
  • Duration:
    March​‌ 2021 – December 2025​​
  • Coordinator:
    Pauline Maurice (CNRS)​​​‌
  • Summary:
    Collaborative robots have​ the potential to reduce​‌ work-related musculoskeletal disorders not​​ only by decreasing the​​​‌ workers' physical load, but​ also by modifying and​‌ improving their postures. Imposing​​ a sudden modification of​​​‌ one's movement can however​ be detrimental to the​‌ acceptance and efficiency of​​ the human-robot collaboration. In​​​‌ ROOIBOS, we will develop​ a framework to plan​‌ user-specific trajectories for collaborative​​ robots, to gradually optimize​​​‌ the efficiency of the​ collaboratiacyon and the long-term​‌ occupational health of the​​ user. We will use​​​‌ machine learning and probabilistic​ methods to perform user-specific​‌ prediction of whole-body movements.​​ We will define dedicated​​​‌ metrics to evaluate the​ movement ergonomic performance and​‌ intuitiveness. We will integrate​​ those elements in a​​​‌ digital human simulation to​ plan a progressive adaptation​‌ of the robot motion​​ accounting for the user's​​​‌ motor preferences. We will​ then use probabilistic decision-making​‌ to adapt the plan​​ on-line to the user's​​​‌ motor adaptation capabilities. This​ will enable a smooth​‌ deployment of collaborative robots​​ at work.

10.4.8 ANR:​​​‌ Ex-Aequo

Participants: Pauline Maurice​.

  • Program:
    ANR JCJC​‌
  • Project acronym:
    Ex-Aequo
  • Project​​ title:
    Exoskeletons and firefighters:​​​‌ homogenizing capabilities and reducing​ constraints (physical, cognitive, organizational)​‌
  • Duration:
    February 2025 –​​ January 2029
  • Coordinator:
    Sophie​​​‌ Lemonnier (Perseus laboratory, University​ of Lorraine)
  • Summary:

    Firefighters​‌ have to perform particularly​​ complex tasks that are​​​‌ both physically and cognitively​ demanding, especially when they​‌ involve carrying heavy loads​​ (e.g., extrication, stretchering). Despite​​​‌ firefighters' rigorous training, this​ poses two major problems:​‌ 1/ Differences in morphology​​ (e.g., the gender effect)​​​‌ lead to a number​ of situational and organizational​‌ problems;

    2/ Physical and​​ cognitive fatigue are present,​​​‌ leading in the long​ term to the development​‌ of musculoskeletal disorders (MSD).​​

    The solution envisaged as​​​‌ part of this project​ involves the use of​‌ an exoskeleton as an​​ aid in carrying out​​​‌ certain tasks. In order​ to evaluate this solution​‌ from different angles, and​​ also with the aim​​​‌ of systematizing the method​ for evaluating the exoskeleton​‌ solution, the work will​​ be structured according to​​​‌ three objectives.

    Objective 1​ aims to characterize the​‌ population (socio-demographic data, acceptability)​​ and the tasks (activity​​​‌ analysis), and to select​ the exoskeleton for further​‌ use.

    Objective 2 aims​​ to experimentally evaluate the​​​‌ impact of using the​ exoskeleton. Physical and cognitive​‌ measurements will be taken​​ to compare conditions with​​​‌ and without the exoskeleton,​ depending on the differences​‌ in the morphology of​​ the participants (general public​​​‌ and firefighters).

    Objective 3​ aims to formulate specific​‌ recommendations for firefighters, as​​ well as developing two​​​‌ decision-support tools for making​ recommendations on the integration​‌ of an exoskeleton generalized​​ to other work situations:​​​‌ a questionnaire evaluation and​ a digital simulation.

    This​‌ work will have scientific​​ spin-offs as well as​​​‌ a strong societal impact,​ making a first step​‌ towards greater inclusion and​​ less occupational risk for​​​‌ firefighters, generalized to other​ professions via decision-support tools.​‌

10.4.9 COMS@N: EXOCODESIM

Participants:​​ Serena Ivaldi, Pauline​​ Maurice.

  • Program:
    COMS@N​​​‌ Appel à Pré-Maturation
  • Project‌ acronym:
    EXOCODESIM
  • Project title:‌​‌
    Exoskeleton Co-design by Simulation​​
  • Duration:
    October 2024 –​​​‌ September 2025
  • Coordinator:
    Serena‌ Ivaldi
  • Local coordinator:
    Serena‌​‌ Ivaldi
  • Abstract:
    We wish​​ to develop our own​​​‌ prototypes of exoskeletons. This‌ grant allows to hire‌​‌ two engineers for 1​​ year, to develop exoskeleton​​​‌ protoypes and validate them‌ with simulation tools. The‌​‌ project results are transfered​​ to a startup of​​​‌ the team, led by‌ Raphael Bousigues and Raphael‌​‌ Lartot - they are​​ currently incubated at Inria​​​‌ Startup Studio.

10.5 Regional‌ initiatives

10.5.1 LUE: EXOSIM‌​‌

Participants: Pauline Maurice,​​ Serena Ivaldi.

  • Program:​​​‌
    LUE
  • Project acronym:
    EXOSIM‌
  • Project title:
    Simulation de‌​‌ tâches pénibles couramment réalisées​​ en milieu hospitalier pour​​​‌ guider la recherche automatique‌ de solutions exosquelettes pour‌​‌ assister les soignants
  • Duration:​​
    July 2024 – July​​​‌ 2026
  • Coordinator:
    Serena Ivaldi‌
  • Summary:
    Following the previous‌​‌ ExoTurn and ExoCare projects​​ coordinated by Serena Ivaldi​​​‌ and Prof. Nicla Settembre,‌ we wish to continue‌​‌ the collaboration between Inria/Loria​​ and the Nancy University​​​‌ Hospital (CHRU de Nancy)‌ in the use of‌​‌ digital tools to support​​ the introduction, experimentation, and​​​‌ deployment of exoskeletons in‌ healthcare settings. In this‌​‌ project, we aim to​​ develop a new program​​​‌ for the development of‌ digital tools to: 1)‌​‌ help the hospital identify​​ existing exoskeletons that could​​​‌ potentially be relevant for‌ assisting healthcare workers, or,‌​‌ failing that, to define​​ the specifications for a​​​‌ new exoskeleton to be‌ acquired, through a physical‌​‌ simulation software of a​​ virtual human and ergonomic​​​‌ evaluation developed by Inria/Loria;‌ 2) have the software‌​‌ validated by the ergonomists​​ of CHRU de Nancy,​​​‌ as well as the‌ choice of the device;‌​‌ 3) equip the hospital​​ with digital instruments integrating​​​‌ both subjective evaluation (via‌ questionnaires) and objective evaluation‌​‌ (via wearable sensors) to​​ monitor the experimental campaign​​​‌ for testing exoskeletons in‌ the short, medium, and‌​‌ long term, using these​​ data to guide the​​​‌ exoskeleton adoption process.

10.6‌ Public policy support

  • Serena‌​‌ Ivaldi contributed to the​​ writing of the SRA​​​‌ (Strategic Research Agenda) related‌ to robotics and AI‌​‌ for the European Commission,​​ in the context of​​​‌ the euROBIN project (Network‌ of Excellence)
  • Jean-Baptiste Mouret‌​‌ was interim coordinator of​​ the ENACT Cluster IA​​​‌ project, having a significant‌ impact to the political‌​‌ decisions in the Grand​​ Est Region about AI.​​​‌

11 Dissemination

11.1 Promoting‌ scientific activities

11.1.1 Scientific‌​‌ events: organisation

General chair,​​ scientific chair
Member of the organizing​​ committees
  • Enrico Mingo Hoffman​​​‌ was part of the‌ organization of the Optimization‌​‌ for Robotics Summer School​​​‌ held at the University​ of Patras, Greece, from​‌ the 14th to 18th​​ of July 2025. He​​​‌ was part of the​ Organizing Committee of the​‌ 28th issue of the​​ International Conference Series on​​​‌ Climbing and Walking Robots​ and the Support Technologies​‌ for Mobile Machines (CLAWAR)​​ 2025, as Special/Workshop Session​​​‌ Chair.
Workshops organization
Other
  • Maria​‌ Elisabetta Zibetti organised a​​ 1-day visit and scientific​​​‌ meeting with David St-Onge​ (ETS Montreal) and Samuel​‌ Bianchini (ENSAD Paris) in​​ our lab, to discuss​​​‌ about robotics, design and​ behavior, and possible collaborations.​‌

11.1.2 Scientific events: selection​​

Member of the conference​​​‌ program committees
  • Pauline Maurice​ was an Associate Editor​‌ for IEEE-RSJ IROS 2025,​​ IEEE-RAS Humanoids 2025 and​​​‌ IEEE-RAS ICRA 2026.
  • Enrico​ Mingo Hoffman was an​‌ Associate Editor for IEEE-RSJ​​ IROS 2025, IEEE-RAS Humanoids​​​‌ 2025 and IEEE-RAS ICRA​ 2026 (conference). He also​‌ served as Chair of​​ the IEEE HUMANOIDS 2025​​​‌ Oral Session 1 and​ chaired the keynote speech​‌ of Prof. Shuran Song.​​ At the same conference​​​‌ he was also part​ of the Review Committee​‌ for the Best Oral,​​ Best Interactive, and Mike​​​‌ Stillman awards.
  • Serena Ivaldi​ was an Associate Editor​‌ for ARSO 2025 and​​ ICRA 2026.
  • Guillaume Bellegarda​​​‌ was an Associate Editor​ for ICRA 2026.
Reviewer​‌
  • Serena Ivaldi was a​​ reviewer for ARSO 2025,​​​‌ HRI 2025, ICRA 2026,​ IROS 2025.
  • Guillaume Bellegarda​‌ was a reviewer for​​ RSS 2025, IROS 2025,​​​‌ CORL 2025, Humanoids 2025,​ CLAWAR 2025, ECC 2026,​‌ CVPR 2026.

11.1.3 Journal​​

Member of the editorial​​​‌ boards
  • Pauline Maurice is​ associate editor for IEEE​‌ Transactions on Neural Systems​​ and Rehabilitation Engineering (TNSRE).​​​‌
  • Enrico Mingo Hoffman is​ associate editor for the​‌ International Journal of Robotics​​ Research (IJRR), and for​​​‌ the IEEE Robotics and​ Automation Letters Special Issue​‌ on Advancements in MPC​​ and Learning Algorithms for​​​‌ Legged Robots.
  • Jean-Baptiste Mouret​ is a member of​‌ the editorial board of​​ NPJ Robotics.
  • Jean-Baptiste Mouret​​​‌ is an associate editor​ of ACM Transactions on​‌ Evolutionary Computation and Learning​​
  • Serena Ivaldi is associate​​​‌ editor for IEEE Transactions​ on Robotics (T-RO).
  • Guillaume​‌ Bellegarda is an associate​​ editor for IEEE Robotics​​​‌ and Automation Letters Special​ Issue on Advancements in​‌ MPC and Learning Algorithms​​ for Legged Robots.
Reviewer​​​‌ - reviewing activities
  • Pauline​ Maurice reviewed articles for​‌ IEEE Transactions on Robotics,​​ IEEE Robotics and Automation​​​‌ Letters, the International Journal​ of Robotics Research, IEEE​‌ Transactions on Human-Machine Systems.​​
  • Enrico Mingo Hoffman reviewed​​​‌ articles for IEEE Transactions​ on Robotics, IEEE Robotics​‌ and Automation Letters, and​​ the International Journal of​​​‌ Robotics Research.
  • Serena Ivaldi​ was a reviewer for​‌ Scientific Reports and Transactions​​ on HRI.
  • Guillaume Bellegarda​​​‌ was a reviewer for​ IEEE Transactions on Robotics,​‌ IEEE Robotics and Automation​​ Letters, Science Robotics, IEEE​​​‌ Transactions on Field Robotics.​

11.1.4 Invited talks

  • Pauline​‌ Maurice gave an invited​​ talk at the seminar​​ "Mechatronics Days" of ENS​​​‌ Rennes (France), in a‌ workshop on "Enhancing Human‌​‌ Intuition and Robotic Precision​​ with Optimization-Driven Shared Autonomy"​​​‌ at JNRR 2025 (France),‌ and in a workshop‌​‌ on "Simulated and XR​​ Environments for Ergonomics and​​​‌ Physical Assistance" of the‌ conference PREMUS 2025 (Germany).‌​‌
  • Serena Ivaldi was keynote​​ speaker at the international​​​‌ conference IEEE Telepresence 2025.‌
  • Serena Ivaldi was keynote‌​‌ speaker at the IEEE​​ RAS Optimization for Robotics​​​‌ Summer School.
  • Serena‌ Ivaldi gave an invited‌​‌ talk about robotics &​​ AI at the European​​​‌ Cyber Week 2025 in‌ Rennes (France).
  • Dionis Totsila‌​‌ gave an invited talk​​ at the HUMANOIDS 2025​​​‌ Workshop on Assistive Robots‌ for Caregiving, titled “Enabling‌​‌ simple interactions with assistive​​ robots using natural language“.​​​‌
  • Guillaume Bellegarda gave two‌ invited talks at the‌​‌ ELLIIT 2025 Robot Learning​​ Focus Period in Lund​​​‌ (Sweden), one seminar "Deep‌ Learning, Optimal Control, and‌​‌ Bio-Inspired Control for Dynamic​​ Robots", and one course​​​‌ lecture "Legged Locomotion: Trajectory‌ Optimization, Machine Learning, Bio-Inspired‌​‌ Control".
  • Guillaume Bellegarda gave​​ a lecture at the​​​‌ Legged Robots masters course‌ at EPFL (Switzerland) on‌​‌ "Legged Locomotion: Trajectory Optimization,​​ Machine Learning, Bio-Inspired Control".​​​‌
  • Enrico Mingo Hoffman gave‌ a lecture on optimal‌​‌ control, “From Reactive to​​ Predictive Control”, with practicals​​​‌ (in total 2h) at‌ the Summer School on‌​‌ Optimization for Robotics, Univ.​​ of Patras, Greece.
  • Enrico​​​‌ Mingo Hoffman gave a‌ lecture on closed loop‌​‌ kinematics chains for the​​ Underactuated Robotics course at​​​‌ the Univ. of Rome‌ "La Sapienza", Italy.

11.1.5‌​‌ Leadership within the scientific​​ community

  • Pauline Maurice is​​​‌ a co-chair of the‌ technical committee on “Humans‌​‌ and Robots” of the​​ French GdR Robotique.
  • Enrico​​​‌ Mingo Hoffman was Corresponding‌ Chair of the IEEE-RAS‌​‌ Technical Committee on "Whole-Body​​ Control", now a co-chair​​​‌ for end of mandate‌ (3 years).
  • Serena Ivaldi‌​‌ was Associate Vice-President of​​ IEEE Robotics & Automation​​​‌ Society (RAS) Members Activities‌ Board (MAB); she was‌​‌ also Senior Program Committee​​ Member for the HUMANOIDS​​​‌ 2025 conference as part‌ of the IEEE HUMANOIDS‌​‌ Steering Committee.

11.1.6 Scientific​​ expertise

  • Enrico Mingo Hoffman​​​‌ served as an expert‌ evaluator for the ARISE‌​‌ 1st Open Call proposals​​ 2025 for the EU-funded​​​‌ project ARISE. He was‌ also invited to participate‌​‌ to the panel discussion​​ "Mobile Manipulation of rigid​​​‌ and deformable objects: Community‌ Challenges and Opportunities" at‌​‌ the European Robotics Forum​​ (ERF) 2025.
  • Serena Ivaldi​​​‌ was an expert reviewer‌ for: ANR (Industrial Chair‌​‌ + AAPG 2025); ANRT​​ for a CIFRE thesis;​​​‌ ENACT Cluster IA for‌ a PhD selection jury;‌​‌ ERC Advanced for one​​ project; EUropean Commission to​​​‌ review the European Project‌ FELICE; University of Massachusset‌​‌ Amherst to evaluate the​​ tenure of an Associate​​​‌ professor. She was also‌ invited as expert in‌​‌ robotics to private events​​ for two companies: one​​​‌ French leader in logistics,‌ one French leader in‌​‌ the luxury industry.

11.1.7​​ Research administration

  • Jean-Baptiste Mouret​​​‌ was “Délégué Scientifique” (head‌ of science) of the‌​‌ Inria center of the​​ University of Lorraine.
  • Jean-Baptiste​​​‌ Mouret was the scientific‌ coordinator of the ENACT‌​‌ Cluster-IA project from 07/2025.​​​‌
  • Jean-Baptiste Mouret was vice-president​ of the hiring commitee​‌ for the permanent research​​ positions (CRCN and ISFP)​​​‌ at the Inria center​ of the University of​‌ Lorraine.
  • Jean-Baptiste Mouret was​​ member of the Evaluation​​​‌ Commission of Inria (as​ a “Délégué scientifique”)
  • Serena​‌ Ivaldi was coordinator of​​ the PEPR O2R AS3​​​‌ project.

11.2 Teaching -​ Supervision - Juries -​‌ Educational and pedagogical outreach​​

11.2.1 Teaching

  • Master: Serena​​​‌ Ivaldi and Anna Bucchieri​ , “Analyse Comportementale”, 20h​‌ CM/TP, M2 “Sciences Cognitives”,​​ Univ. Lorraine, France. –​​​‌ (2024/2025 done by Serena​ Ivaldi, 2025/2026 done by​‌ Anna Bucchieri)
  • Master: Pauline​​ Maurice , “Analyse Comportementale”,​​​‌ 15h CM/TP, M2 “Sciences​ Cognitives”, Univ. Lorraine, France.​‌
  • Master: Pauline Maurice ,​​ “Robotic assistive devices for​​​‌ occupational applications: From research​ to deployment”, 9h CM/TP,​‌ 3rd year (M2) in​​ “Control Engineering”, Centrale-Supelec, France.​​​‌
  • Master: Pauline Maurice ,​ “Human motion analysis for​‌ human-robot interaction”, 6h CM,​​ M2 Robotics and Biomechanics​​​‌ (joint class), Univ. of​ Lyon, France.
  • Bachelor: Enrico​‌ Mingo Hoffman, “Operation Research”,​​ 18 h, Civil Engineering,​​​‌ Mines, Univ. Lorraine, France.​
  • Bachelor: Enrico Mingo Hoffman,​‌ “Introduction to Robotics”, 7​​ h, Civil Engineering, Mines,​​​‌ Univ. Lorraine, France.

11.2.2​ Supervision

  • PhD: Alexandre Oliveira​‌ Souza, “Intelligence Artificielle et​​ contrôle de systèmes interactifs​​​‌ : Application aux exosquelettes”,​ started in May 2022,​‌ defended in Septembrer 2025,​​ François Charpillet (advisor), Pauline​​​‌ Maurice (co-advisor), Serena Ivaldi​ (co-advisor), CIFRE with Safran.​‌
  • PhD in progress: Aya​​ Yaacoub, “User-specific planning of​​​‌ a collaborative robot behavior​ to help prevent musculoskeletal​‌ disorders”, started in December​​ 2021 (defense planned for​​​‌ February 2026), Francis Colas​ (advisor), Pauline Maurice (co-advisor),​‌ Vincent Thomas (co-advisor), ROOIBOS​​ project.
  • PhD in progress:​​​‌ Ioannis Tsikelis, “Whole-Body planning,​ control and learning for​‌ loco-manipulation actions”, started in​​ October 2024, Serena Ivaldi​​​‌ (co-advisor), Enrico Mingo Hoffman​ (co-advisor), MeRLin project.
  • PhD​‌ in progress: Ioannis Loizou,​​ “Generation of expressive motions​​​‌ for humanoid robots", started​ in October 2025, Serena​‌ Ivaldi (co-advisor), Enrico Mingo​​ Hoffman (co-advisor), OSTENSIVE project.​​​‌
  • PhD in progress: Thomas​ Martin, “Utilisation de l'apprentissage​‌ automatique pour le vol​​ de drones en milieu​​​‌ très confiné”, started in​ January 2024, Jean-Baptiste Mouret​‌ (advisor) and Thibaut Rahajiraona​​ (co-avisor), BUCOLYC project.
  • PhD​​​‌ in progress: Konstantinos Tsakonas,​ “Intelligence artificielle pour la​‌ prédiction de trajectoires en​​ robotique téléopérée”, started in​​​‌ October 2024, Serena Ivaldi​ (advisor) and Jean-Baptiste Mouret​‌ (co-advisor), ATOR project.
  • PhD​​ in progress: Mathis Antonetti,​​​‌ “Diffusion pour l'apprentissage de​ politiques de manipulation en​‌ robotique”, started in December​​ 2024, Serena Ivaldi (advisor)​​​‌ and Jean-Baptiste Mouret (co-advisor),​ La Poste project.
  • PhD​‌ in progress: Georgios Kalakonis,​​ “Données synthétiques pour l'entrainement​​​‌ de modèles multi-modaux Vision-Language-Actions​ pour des robots généralistes”,​‌ started in December 2025,Jean-Baptiste​​ Mouret (advisor) and Enrico​​​‌ Mingo Hoffman (co-advisor), ENACT​ project.
  • PhD in progress:​‌ Quentin Rolland, “Utilisation de​​ méthodes de détection d’anomalies​​​‌ “one class” pour entraîner​ un robot par apprentissage​‌ par démonstration”, Jean-Baptiste Mouret​​ (advisor) and Fabrice Mayran​​​‌ de Chamisso (co-avisor, CEA),​ PhD with CEA.
  • PhD​‌ in progress: Dionis Totsila,​​ “Apprentissage de gestes bi-manuels​​​‌ par démonstration des humains​ et language naturel”, Serena​‌ Ivaldi (advisor) and Jean-Baptiste​​ Mouret (co-advisor), euROBIN project.​​

11.2.3 Juries

  • Pauline Maurice​​​‌ was
    • Examiner of the‌ PhD of Clément Thevenot‌​‌ (Devah, University of Lorraine)​​
    • Examiner of the PhD​​​‌ of Alexandre Schortgen (INRIA‌ Grenoble, University Grenoble Alpes)‌​‌
    • Examiner of the PhD​​ of Maxime Sabbah (LAAS,​​​‌ University of Toulouse)
    • Examiner‌ of the PhD of‌​‌ Idriss Pelletan (Museum National​​ d'Histoire Naturelle)
    • Examiner of​​​‌ the PhD of Maxime‌ Marchal (Vrije Universiteit Brussel,‌​‌ Belgium)
    • Member of the​​ hiring committee for an​​​‌ Assistant Professor position at‌ Ecole Nationale d’Ingénieurs de‌​‌ Metz (CNU 61)
    • Member​​ of the hiring committee​​​‌ for an Assistant Professor‌ position at Université de‌​‌ Technologie Tarbes Occitaine Pyrénées​​ (CNU 61)
  • Enrico Mingo​​​‌ Hoffman was member of‌ the examination panel for‌​‌ the PhD thesis defense​​ of Juan Hernandez Vicen,​​​‌ Universidad Carlos III de‌ Madrid.
  • Serena Ivaldi was:‌​‌
    • Examiner of the PhD​​ of Maria Valentina Cavarretta​​​‌ (University of Palermo &‌ Université Paris 8)
    • Examiner‌​‌ & President of the​​ Jury of the PhD​​​‌ of Clélie Amiot (University‌ of Lorraine)
    • Reviewer of‌​‌ the PhD of Aymeric​​ Orhan (Université Paris-Saclay)
    • Examiner​​​‌ & President of the‌ Jury of the PhD‌​‌ of Fabio Elnecave Xavier​​ (Université Paris PSL &​​​‌ Mines Paris)
    • Examiner of‌ the PhD of Robin‌​‌ Gigandet (Université de Lille)​​
    • Examiner & President of​​​‌ the Jury of the‌ PhD of Ricardo Garcia-Pinel‌​‌ (Université Paris PSL &​​ Inria)
    • Member of 3​​​‌ CSI: Alessia Fusco (LAAS),‌ Augustin Chartouny (ISIR), Bastien‌​‌ Muraccioli (CNRS-AIST).
    • Member of​​ the hiring committee for​​​‌ a Full Professor at‌ Université de Lorraine.

11.3‌​‌ Popularization

11.3.1 Productions (articles,​​ videos, podcasts, serious games,​​​‌ ...)

  • Serena Ivaldi was‌ interviewed by and appeared‌​‌ on Planete Robots, Le​​ Parisien, Usine Nouvelle, Le​​​‌ Point, Science et Vie,‌ L'Europe, France Info, TF1.‌​‌
  • Jean-Baptiste Mouret was interviewed​​ by and appeared on​​​‌ Planete Robot, Le Journal‌ du Net.
  • Enrico Mingo‌​‌ Hoffman was interviewed by​​ and appeared on Science​​​‌ & Vie ("Le mécha‌ : un robot géant‌​‌ vite encombrant") and Le​​ Parisien ("VIDÉO. « Ces​​​‌ images sont vraies »‌ : EngineAI, l’entreprise chinoise‌​‌ qui a semé le​​ trouble avec son robot​​​‌ T-800").

11.3.2 Participation in‌ Live events

  • Pauline Maurice‌​‌ participated in an event​​ from "Les Décodeuses du​​​‌ Numérique" organized by CNRS‌ Sciences Informatiques in Paris,‌​‌ to present the work​​ of female researchers in​​​‌ digital sciences to high‌ school students.
  • Enrico Mingo‌​‌ Hoffman participated in an​​ event at Viva tech​​​‌ 2025 entitled “Global Talent,‌ French Future: Stories of‌​‌ AI Researchers in France”​​

11.3.3 Others science outreach​​​‌ relevant activities

  • Pauline Maurice‌ participated in a podcast‌​‌ for children (Mission Info​​ of France TV), to​​​‌ promote women in science.‌

12 Scientific production

12.1‌​‌ Major publications

12.2 Publications of​​ the year

International journals​​​‌

International peer-reviewed‌ conferences

Conferences​​ without proceedings

Other scientific publications

Patents

12.3 Cited publications

  • 28​​ articleA.Alexander Amini​​​‌, W.Wilko Schwarting‌, A.Ava Soleimany‌​‌ and D.Daniela Rus​​. Deep evidential regression​​​‌.Advances in Neural‌ Information Processing Systems33‌​‌2020, 14927--14937back​​ to text
  • 29 article​​​‌T.Timothee Anne,‌ E.Eloise Dalin,‌​‌ I.Ivan Bergonzani,​​ S.Serena Ivaldi and​​​‌ J.-B.Jean-Baptiste Mouret.‌ First Do Not Fall:‌​‌ Learning to Exploit a​​ Wall With a Damaged​​​‌ Humanoid Robot.IEEE‌ Robotics and Automation Letters‌​‌74October 2022​​, 9028-9035HALDOI​​​‌back to text
  • 30‌ inproceedingsA.Anthony Brohan‌​‌ and others. RT-2:​​ Vision-Language-Action Models Transfer Web​​​‌ Knowledge to Robotic Control‌.arXiv preprint arXiv:2307.15818‌​‌2023back to text​​
  • 31 articleA.Antoine​​​‌ Cully, J.Jeff‌ Clune, D.Danesh‌​‌ Tarapore and J.-B.Jean-Baptiste​​ Mouret. Robots that​​​‌ can adapt like animals‌.Nature5217553‌​‌May 2015, 503-507​​HALDOIback to​​​‌ text
  • 32 articleA.‌Alain Droniou, S.‌​‌Serena Ivaldi and O.​​Olivier Sigaud. Deep​​​‌ unsupervised network for multimodal‌ perception, representation and classification‌​‌.Robotics and Autonomous​​ Systems71September 2015​​​‌, 83-98HALDOI‌back to text
  • 33‌​‌ articleS. A.Shirley​​ A Elprama, B.​​​‌Bram Vanderborght and A.‌An Jacobs. An‌​‌ industrial exoskeleton user acceptance​​ framework based on a​​​‌ literature review of empirical‌ studies.Applied Ergonomics‌​‌1002022, 103615​​back to text
  • 34​​​‌ articleM. C.Matthew‌ C Fontaine and S.‌​‌Stefanos Nikolaidis. Evaluating​​ human--robot interaction algorithms in​​​‌ shared autonomy via quality‌ diversity scenario generation.‌​‌ACM Transactions on Human-Robot​​ Interaction (THRI)113​​​‌2022, 1--30back‌ to text
  • 35 inproceedings‌​‌S.Serena Ivaldi,​​ P.Pauline Maurice,​​​‌ W.Waldez Gomes,‌ J.Jean Theurel,‌​‌ L.Liên Wioland,​​ J.-J.Jean-Jacques Atain-Kouadio,​​​‌ L.Laurent Claudon,‌ H.Hind Hani,‌​‌ A.Antoine Kimmoun,​​ J.-M.Jean-Marc Sellal,​​​‌ B.Bruno Levy,‌ J.Jean Paysant,‌​‌ S.Sergue\"i Malikov,​​ B.Bruno Chenuel and​​​‌ N.Nicla Settembre.‌ Using exoskeletons to assist‌​‌ medical staff during prone​​ positioning of mechanically ventilated​​​‌ COVID-19 patients: a pilot‌ study.AHFE 2021‌​‌ - 12th International Conference​​ on Applied Human Factors​​​‌ and Ergonomics263Advances‌ in Human Factors and‌​‌ Ergonomics in Healthcare and​​ Medical Devices: Proceedings of​​​‌ the AHFE 2021 Virtual‌ Conference on Human Factors‌​‌ and Ergonomics in Healthcare​​​‌ and Medical Devices, July​ 25-29, 2021, USANew​‌ York, United StatesSpringer​​July 2021, 88​​​‌HALDOIback to​ textback to text​‌
  • 36 inproceedingsS. J.​​Steven Jens Jorgensen,​​​‌ M. W.Michael W.​ Lanighan, S. S.​‌Sylvain S. Bertrand,​​ A.Andrew Watson,​​​‌ J. S.Joseph S.​ Altemus, R. S.​‌R. Scott Askew,​​ L.Lyndon Bridgwater,​​​‌ B.Beau Domingue,​ C.Charlie Kendrick,​‌ J.Jason Lee,​​ M.Mark Paterson,​​​‌ J.Jairo Sanchez,​ P.Patrick Beeson,​‌ S.Seth Gee,​​ S.Stephen Hart,​​​‌ A. H.Ana Huaman​ Quispe, R.Robert​‌ Griffin, I.Inho​​ Lee, S.Stephen​​​‌ McCrory, L.Luis​ Sentis, J.Jerry​‌ Pratt and J. S.​​Joshua S. Mehling.​​​‌ Deploying the NASA Valkyrie​ Humanoid for IED Response:​‌ An Initial Approach and​​ Evaluation Summary.2019​​​‌ IEEE-RAS 19th International Conference​ on Humanoid Robots (Humanoids)​‌2019, 1-8DOI​​back to text
  • 37​​​‌ articleJ.Joonho Lee​, J.Jemin Hwangbo​‌, L.Lorenz Wellhausen​​, V.Vladlen Koltun​​​‌ and M.Marco Hutter​. Learning quadrupedal locomotion​‌ over challenging terrain.​​Science Robotics547​​​‌2020, eabc5986URL:​ https://www.science.org/doi/abs/10.1126/scirobotics.abc5986DOIback to​‌ text
  • 38 articleB.​​Bryan Lim and S.​​​‌Stefan Zohren. Time-series​ forecasting with deep learning:​‌ a survey.Philosophical​​ Transactions of the Royal​​​‌ Society A3792194​2021, 20200209back​‌ to text
  • 39 inproceedings​​A.Anji Ma,​​​‌ Y.Yoann Fleytoux,​ J.-B.Jean-Baptiste Mouret and​‌ S.Serena Ivaldi.​​ VP-GO: A 'Light' Action-Conditioned​​​‌ Visual Prediction Model for​ Grasping Objects.ICARM​‌ 2022 - IEEE International​​ Conference on Advanced Robotics​​​‌ and MechatronicsGuilin, China​July 2022HALback​‌ to text
  • 40 inproceedings​​A.Adrien Malaisé,​​​‌ S.Sophie Nertomb,​ F.François Charpillet and​‌ S.Serena Ivaldi.​​ Towards collaboration between professional​​​‌ caregivers and robots -​ A preliminary study.​‌International Conference on Social​​ Robotics - Workshop ``Using​​​‌ social robots to improve​ the quality of life​‌ in the elderly''Kansas​​ City, United StatesNovember​​​‌ 2016HALback to​ text
  • 41 inproceedingsS.​‌Sebastian Marichal, A.​​Adrien Malaisé, V.​​​‌Valerio Modugno, O.​Oriane Dermy, F.​‌François Charpillet and S.​​Serena Ivaldi. One-shot​​​‌ Evaluation of the Control​ Interface of a Robotic​‌ Arm by Non-Experts.​​International Conference on Social​​​‌ RoboticsKansas City, United​ StatesNovember 2016HAL​‌back to text
  • 42​​ inproceedingsP.Pauline Maurice​​​‌, L.Ludivine Allienne​, A.Adrien Malaisé​‌ and S.Serena Ivaldi​​. Ethical and Social​​​‌ Considerations for the Introduction​ of Human-Centered Technologies at​‌ Work.IEEE Workshop​​ on Advanced Robotics and​​​‌ its Social Impacts (ARSO)​Genova, Italy2018HAL​‌back to text
  • 43​​ articleP.Pauline Maurice​​​‌, F.Félix Cuny-Enault​ and S.Serena Ivaldi​‌. Influence of a​​ passive back support exoskeleton​​​‌ on simulated patient bed​ bathing: Results of an​‌ exploratory study.Ergonomics​​October 2022, 1-15​​HALDOIback to​​​‌ text
  • 44 inproceedingsP.‌P Maurice, S.‌​‌S Lemonnier, N.​​N Kohili, L.​​​‌L Cavagnac and G.‌G Mornieux. Biomechanical‌​‌ effects of using a​​ passive upper-limb exoskeleton to​​​‌ assist firefighters during vehicle‌ extrication maneuver.48th‌​‌ Congress of the Society​​ of BiomechanicsGrenoble, France​​​‌2023HALback to‌ text
  • 45 inproceedingsE.‌​‌Enrico Mingo Hoffman,​​ A.Arturo Laurenzi,​​​‌ F.Francesco Ruscelli,‌ L.Luca Rossini,‌​‌ L.Lorenzo Baccelliere,​​ D.Davide Antonucci,​​​‌ A.Alessio Margan,‌ P.Paolo Guria,‌​‌ M.Marco Migliorini,​​ S.Stefano Cordasco and​​​‌ others. Design and‌ Validation of a Multi-Arm‌​‌ Relocatable Manipulator for Space​​ Applications.IEEE International​​​‌ Conference on Robotics and‌ Automation (ICRA)2023back‌​‌ to text
  • 46 article​​J.-B.Jean-Baptiste Mouret and​​​‌ J.Jeff Clune.‌ Illuminating search spaces by‌​‌ mapping elites.arXiv​​ preprint arXiv:1504.049092015back​​​‌ to textback to‌ text
  • 47 inproceedingsA.‌​‌Alexandre Oliveira Souza,​​ J.Jean Michenaud,​​​‌ R.Raphaël Lartot,‌ J.Jordane Grenier,‌​‌ F.François Charpillet,​​ P.Pauline Maurice and​​​‌ S.Serena Ivaldi.‌ Simulating Upper Body Exoskeleton‌​‌ on a Digital Human​​ Model.JNRHAngers,​​​‌ FranceJuly 2022HAL‌DOIback to text‌​‌
  • 48 inproceedingsK.Kazuya​​ Otani, K.Karim​​​‌ Bouyarmane and S.Serena‌ Ivaldi. Generating Assistive‌​‌ Humanoid Motions for Co-Manipulation​​ Tasks with a Multi-Robot​​​‌ Quadratic Program Controller.‌ICRA 2018 - International‌​‌ Conference on Robotics and​​ AutomationBrisbane, AustraliaMay​​​‌ 2018HALback to‌ text
  • 49 inproceedingsL.‌​‌Luigi Penco, J.-B.​​Jean-Baptiste Mouret and S.​​​‌Serena Ivaldi. Prescient‌ teleoperation of humanoid robots‌​‌.Proc. IEEE/RAS International​​ Conference on Humanoid Robots​​​‌ (HUMANOIDS)2023back to‌ text
  • 50 articleJ.‌​‌ K.Justin K Pugh​​, L. B.Lisa​​​‌ B Soros and K.‌ O.Kenneth O Stanley‌​‌. Quality diversity: A​​ new frontier for evolutionary​​​‌ computation.Frontiers in‌ Robotics and AI3‌​‌2016, 40back​​ to text
  • 51 article​​​‌F.Francesco Romano,‌ G.Gabriele Nava,‌​‌ M.Morteza Azad,​​ J.Jernej Camernik,​​​‌ S.Stefano Dafarra,‌ O.Oriane Dermy,‌​‌ C.Claudia Latella,​​ M.Maria Lazzaroni,​​​‌ R.Ryan Lober,‌ M.Marta Lorenzini,‌​‌ D.Daniele Pucci,​​ O.Olivier Sigaud,​​​‌ S.Silvio Traversaro,‌ J.Jan Babiċ,‌​‌ S.Serena Ivaldi,​​ M.Michael Mistry,​​​‌ V.Vincent Padois and‌ F.Francesco Nori.‌​‌ The CoDyCo Project achievements​​ and beyond: Towards Human​​​‌ Aware Whole-body Controllers for‌ Physical Human Robot Interaction‌​‌.IEEE Robotics and​​ Automation Letters2017HAL​​​‌DOIback to text‌
  • 52 articleJ.Jonathan‌​‌ Savin, C.Clarisse​​ Gaudez, M. A.​​​‌Martine A Gilles,‌ V.Vincent Padois and‌​‌ P.Philippe Bidaud.​​ Digital human model simulation​​​‌ of the movement variability‌ induced by muscle fatigue‌​‌ during a repetitive pointing​​ task until exhaustion.​​​‌International Journal of the‌ Digital Human23‌​‌2023, 197--222back​​​‌ to text