Perspectives in machine learning for wildlife conservation

Devis Tuia(École Polytechnique Fédérale de Lausanne), Benjamin Kellenberger(École Polytechnique Fédérale de Lausanne), Sara Beery(California Institute of Technology), Blair R. Costelloe(University of Konstanz), Silvia Zuffi(Istituto di Matematica Applicata e Tecnologie Informatiche), Benjamin Risse(University of Münster), Alexander Mathis(École Polytechnique Fédérale de Lausanne), Mackenzie Weygandt Mathis(École Polytechnique Fédérale de Lausanne), Frank van Langevelde(Wageningen University & Research), Tilo Burghardt(University of Bristol), Roland Kays(North Carolina Museum of Natural Sciences), Holger Klinck(Cornell University), Martin Wikelski(University of Konstanz), Iain D. Couzin(University of Konstanz), Grant Van Horn(Cornell University), Margaret C. Crofoot(University of Konstanz), Charles V. Stewart(Rensselaer Polytechnic Institute), Tanya Berger‐Wolf(The Ohio State University)
Nature Communications
February 9, 2022
Cited by 637Open Access
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Abstract

Inexpensive and accessible sensors are accelerating data acquisition in animal ecology. These technologies hold great potential for large-scale ecological understanding, but are limited by current processing approaches which inefficiently distill data into relevant information. We argue that animal ecologists can capitalize on large datasets generated by modern sensors by combining machine learning approaches with domain knowledge. Incorporating machine learning into ecological workflows could improve inputs for ecological models and lead to integrated hybrid modeling tools. This approach will require close interdisciplinary collaboration to ensure the quality of novel approaches and train a new generation of data scientists in ecology and conservation.


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