Literature DB >> 32369485

Machine learning goes wild: Using data from captive individuals to infer wildlife behaviours.

Wanja Rast1, Sophia Elisabeth Kimmig2, Lisa Giese1, Anne Berger1.   

Abstract

1. Remotely tracking distinct behaviours of animals using acceleration data and machine learning has been carried out successfully in several species in captive settings. In order to study the ecology of animals in natural habitats, such behaviour classification models need to be transferred to wild individuals. However, at present, the development of those models usually requires direct observation of the target animals. 2. The goal of this study was to infer the behaviour of wild, free-roaming animals from acceleration data by training behaviour classification models on captive individuals, without the necessity to observe their wild conspecifics. We further sought to develop methods to validate the credibility of the resulting behaviour extrapolations. 3. We trained two machine learning algorithms proposed by the literature, Random Forest (RF) and Support Vector Machine (SVM), on data from captive red foxes (Vulpes vulpes) and later applied them to data from wild foxes. We also tested a new advance for behaviour classification, by applying a moving window to an Artificial Neural Network (ANN). Finally, we investigated four strategies to validate our classification output. 4. While all three machine learning algorithms performed well under training conditions (Kappa values: RF (0.82), SVM (0.78), ANN (0.85)), the established methods, RF and SVM, failed in classifying distinct behaviours when transferred from captive to wild foxes. Behaviour classification with the ANN and a moving window, in contrast, inferred distinct behaviours and showed consistent results for most individuals. 5. Our approach is a substantial improvement over the methods previously proposed in the literature as it generated plausible results for wild fox behaviour. We were able to infer the behaviour of wild animals that have never been observed in the wild and to further illustrate the credibility of the output. This framework is not restricted to foxes but can be applied to infer the behaviour of many other species and thus empowers new advances in behavioural ecology.

Entities:  

Year:  2020        PMID: 32369485     DOI: 10.1371/journal.pone.0227317

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  4 in total

1.  The Future of Artificial Intelligence in Monitoring Animal Identification, Health, and Behaviour.

Authors:  Jenna V Congdon; Mina Hosseini; Ezekiel F Gading; Mahdi Masousi; Maria Franke; Suzanne E MacDonald
Journal:  Animals (Basel)       Date:  2022-07-01       Impact factor: 3.231

2.  Assessment of Machine Learning Models to Identify Port Jackson Shark Behaviours Using Tri-Axial Accelerometers.

Authors:  Julianna P Kadar; Monique A Ladds; Joanna Day; Brianne Lyall; Culum Brown
Journal:  Sensors (Basel)       Date:  2020-12-11       Impact factor: 3.576

3.  Red Foxes in the Filing Cabinet: Günter Tembrock's Image Collection and Media Use in Mid-Century Ethology.

Authors:  Sophia Gräfe
Journal:  Ber Wiss       Date:  2022-05-18       Impact factor: 0.500

4.  Deep learning-based pose estimation for African ungulates in zoos.

Authors:  Max Hahn-Klimroth; Tobias Kapetanopoulos; Jennifer Gübert; Paul Wilhelm Dierkes
Journal:  Ecol Evol       Date:  2021-05-04       Impact factor: 2.912

  4 in total

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