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Section: New Results

Data Search

Spatially Localized Visual Dictionary Learning

Participants : Valentin Leveau, Alexis Joly, Patrick Valduriez.

In [44], we devise new representation learning algorithms that overcome the lack of interpretability of classical visual models. We introduce a new recursive visual patch selection technique built on top of a Shared Nearest Neighbors embedding method. The main contribution is to drastically reduce the high-dimensionality of such over-complete representation using a recursive feature elimination method. We show that the number of spatial atoms of the representation can be reduced by up to two orders of magnitude without degrading much the encoded information. The resulting representations are shown to provide competitive image classification performance with the state-of-the-art while enabling to learn highly interpretable visual models. This contribution was the last one in Valentin Leveau's PhD on Nearest Neighbor Representations [13].

Crowdsourcing Biodiversity Monitoring

Participants : Alexis Joly, Julien Champ, Herve Goeau, Jean-Christophe Lombardo.

Large scale biodiversity monitoring is essential for sustainable development (earth stewardship). With the recent advances in computer vision, we see the emergence of more and more effective identification tools, thus allowing large-scale data collection platforms such as the popular Pl@ntNet initiative to reuse interaction data. Although it covers only a fraction of the world flora, this platform has been used by more than 300K people who produce tens of thousands of validated plant observations each year. This explicitly shared and validated data is only the tip of the iceberg. The real potential relies on the millions of raw image queries submitted by the users of the mobile application for which there is no human validation. People make such requests to get information on a plant along a hike or something they find in their garden but do not know anything about. Allowing the exploitation of such contents in a fully automatic way could scale up the world-wide collection of implicit plant observations by several orders of magnitude, thus complementing the explicit monitoring efforts.

In [37], we first survey existing automated plant identification systems through a five-year synthesis of the PlantCLEF benchmark and an impact study of the Pl@ntNet platform. We then focus on the implicit monitoring scenario and discuss related research challenges at the frontier of computer science and biodiversity studies. Finally, we discuss the results of a preliminary study focused on implicit monitoring of invasive species in mobile search logs. We show that the results are promising while there is room for improvement before being able to automatically share implicit observations within international platforms.

Unsupervised Individual Whales Identification

Participants : Alexis Joly, Jean-Christophe Lombardo.

Identifying organisms is critical in accessing information related to the ecology of species. Unfortunately, this is difficult to achieve due to the level of expertise necessary to correctly identify and record living organisms. To bridge this gap, a lot of work has been done on the development of automated species identification tools such as image-based plant identification or audio recordings-based bird identification. Yet, for some groups, it is preferable to monitor the organisms at the individual level rather than at the species level. The automation of this problem has received much less attention than species identification.

In [39], we address the specific scenario of discovering humpack whale individuals in a large collection of pictures collected by nature observers. The process is initiated from scratch, without any knowledge on the number of individuals and without any training samples of these individuals. Thus, the problem is entirely unsupervised. To address it, we set up and experimented a scalable fine-grained matching system, which allows discovering small rigid visual patterns in highly cluttered backgrounds. The evaluation was conducted in blind in the context of the LifeCLEF evaluation campaign. Results show that the proposed system provides very promising results with regard to the difficulty of the task but that there is still room for improvements to reach higher recall and precision in the future. This work was done in collaboration with the Cetamada NGO.

Evaluation of Biodiversity Identification and Search Techniques

Participants : Alexis Joly, Herve Goeau, Jean-Christophe Lombardo.

We ran a new edition of the LifeCLEF evaluation campaign in the context of the CLEF international research forum. We did share a new subset of the data produced by the Pl@ntNet platform and set up three new challenges: one related to the identification of plant images in open-world data streams, one related to bird sounds identification in soundscapes and one related to the visual-based identification of fish species and whales individuals. More than 150 research groups registered to at least one of the challenges and about 15 of them crossed the finish lines by running their system on the final test data. A synthesis of the results is published in the LifeCLEF 2016 overview paper [38] and more detailed analyses are provided in research reports for the plant task [35] and the bird task [36].

Crowdsourcing Thousands of Specialized Labels using a Bayesian Approach

Participants : Maximilien Servajean, Alexis Joly, Dennis Shasha, Julien Champ, Esther Pacitti.

Large-scale annotated corpora are often at the basis of huge performance gaps in machine learning based content analysis. However, the availability of such datasets has only been made possible thanks to the great amount of human labeling efforts leveraged by popular crowdsourcing and social media platforms. When the labels correspond to well known concepts, it is straightforward to train the annotators by giving a few examples with known answers. It is also straightforward to judge the quality of their labels. But neither is true with thousands of complex domain specific labels. Training on all labels is infeasible and the quality of an annotator’s judgements may be vastly different for some subsets of labels than for others. This paper proposes a set of data-driven algorithms to (i) train annotators on how to disambiguate automatically labelled images, (ii) evaluate the quality of annotators’ answers on new test items and (iii) weight predictions. The algorithms adapt to the skills of each annotator both in the questions asked and the weights given to their answers. The underlying judgements are Bayesian, based on adaptive priors. We measure the benefits of these algorithms by a live user experiment related to image-based plant identification involving around 1,000 people [47] (at the origin of ThePlantGame, see Software section). The proposed methods yield huge gains in annotation accuracy. While a standard user could correctly label around 2% of our data, this goes up to 80% with machine learning assisted training and almost 90% when doing a weighted combination of several annotators’ labels.