A benchmark for computational analysis of animal behavior, using animal-borne tags
Benjamin Hoffman, Maddie Cusimano, Vittorio Baglione, Daniela, Canestrari, Damien Chevallier, Dominic L. DeSantis, Lor\`ene Jeantet, Monique, A. Ladds, Takuya Maekawa, Vicente Mata-Silva, V\'ictor Moreno-Gonz\'alez,, Anthony Pagano, Eva Trapote, Outi Vainio, Antti Vehkaoja

TL;DR
This paper introduces BEBE, a comprehensive benchmark dataset for evaluating machine learning methods in animal behavior analysis using bio-logger data, demonstrating the superiority of deep and self-supervised learning approaches.
Contribution
The paper presents BEBE, the largest diverse benchmark for animal behavior classification, and evaluates machine learning methods, highlighting the effectiveness of deep and self-supervised learning techniques.
Findings
Deep neural networks outperform classical methods across datasets.
Self-supervised learning performs well with limited training data.
Concrete suggestions for designing behavior inference studies.
Abstract
Animal-borne sensors (`bio-loggers') can record a suite of kinematic and environmental data, which are used to elucidate animal ecophysiology and improve conservation efforts. Machine learning techniques are used for interpreting the large amounts of data recorded by bio-loggers, but there exists no common framework for comparing the different machine learning techniques in this domain. This makes it difficult to, for example, identify patterns in what works well for machine learning-based analysis of bio-logger data. It also makes it difficult to evaluate the effectiveness of novel methods developed by the machine learning community. To address this, we present the Bio-logger Ethogram Benchmark (BEBE), a collection of datasets with behavioral annotations, as well as a modeling task and evaluation metrics. BEBE is to date the largest, most taxonomically diverse, publicly available…
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Taxonomy
TopicsSpecies Distribution and Climate Change · Wildlife Ecology and Conservation · Bat Biology and Ecology Studies
