CVQMJan 29, 2024

Computer Vision for Primate Behavior Analysis in the Wild

arXiv:2401.16424v219 citationsh-index: 75Nature Methods
Originality Synthesis-oriented
AI Analysis

This is an incremental perspective paper guiding behavioral scientists and computer vision researchers on current capabilities and future directions in animal behavior analysis.

The paper addresses the gap between computer vision's potential and its practical application in analyzing primate behavior from wild videos, by surveying state-of-the-art methods and advocating for unified frameworks.

Advances in computer vision as well as increasingly widespread video-based behavioral monitoring have great potential for transforming how we study animal cognition and behavior. However, there is still a fairly large gap between the exciting prospects and what can actually be achieved in practice today, especially in videos from the wild. With this perspective paper, we want to contribute towards closing this gap, by guiding behavioral scientists in what can be expected from current methods and steering computer vision researchers towards problems that are relevant to advance research in animal behavior. We start with a survey of the state-of-the-art methods for computer vision problems that are directly relevant to the video-based study of animal behavior, including object detection, multi-individual tracking, individual identification, and (inter)action recognition. We then review methods for effort-efficient learning, which is one of the biggest challenges from a practical perspective. Finally, we close with an outlook into the future of the emerging field of computer vision for animal behavior, where we argue that the field should develop approaches to unify detection, tracking, identification and (inter)action recognition in a single, video-based framework.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes