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16 days ago

Multi-animal pose estimation, identification and tracking with DeepLabCut

{Mackenzie Weygandt Mathis & Alexander Mathis, Catherine Dulac, George Lauder, Venkatesh N. Murthy, Guoping Feng, Daniel Soberanes, Valentina Di Santo, Mohammed Mostafizur Rahman, Tanmay Nath, Steffen Schneider, William Menegas, Shaokai Ye, Mu Zhou, Jessy Lauer}
Multi-animal pose estimation, identification and tracking with DeepLabCut
Abstract

Estimating the pose of multiple animals is a challenging computer vision problem: frequent interactions cause occlusions and complicate the association of detected keypoints to the correct individuals, as well as having highly similar looking animals that interact more closely than in typical multi-human scenarios. To take up this challenge, we build on DeepLabCut, an open-source pose estimation toolbox, and provide high-performance animal assembly and tracking—features required for multi-animal scenarios. Furthermore, we integrate the ability to predict an animal’s identity to assist tracking (in case of occlusions). We illustrate the power of this framework with four datasets varying in complexity, which we release to serve as a benchmark for future algorithm development.

Multi-animal pose estimation, identification and tracking with DeepLabCut | Latest Papers | HyperAI