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Animal Pose Labeling Using General-Purpose Point Trackers

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arxiv 2506.03868 v1 pith:NVAFJWJB submitted 2025-06-04 cs.CV

Animal Pose Labeling Using General-Purpose Point Trackers

classification cs.CV
keywords animallabelingposeautomaticbehaviorsdatasetsframesgeneral-purpose
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automatically estimating animal poses from videos is important for studying animal behaviors. Existing methods do not perform reliably since they are trained on datasets that are not comprehensive enough to capture all necessary animal behaviors. However, it is very challenging to collect such datasets due to the large variations in animal morphology. In this paper, we propose an animal pose labeling pipeline that follows a different strategy, i.e. test time optimization. Given a video, we fine-tune a lightweight appearance embedding inside a pre-trained general-purpose point tracker on a sparse set of annotated frames. These annotations can be obtained from human labelers or off-the-shelf pose detectors. The fine-tuned model is then applied to the rest of the frames for automatic labeling. Our method achieves state-of-the-art performance at a reasonable annotation cost. We believe our pipeline offers a valuable tool for the automatic quantification of animal behavior. Visit our project webpage at https://zhuoyang-pan.github.io/animal-labeling.

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