APT-36K: A Large-scale Benchmark for Animal Pose Estimation and TrackingDownload PDF

03 Jun 2022, 03:42 (modified: 14 Oct 2022, 12:41)NeurIPS 2022 Datasets and Benchmarks Readers: Everyone
Keywords: Animal pose, pose estimation, pose tracking
TL;DR: A new animal tracking dataset
Abstract: Animal pose estimation and tracking (APT) is a fundamental task for detecting and tracking animal keypoints from a sequence of video frames. Previous animal-related datasets focus either on animal tracking or single-frame animal pose estimation, and never on both aspects. The lack of APT datasets hinders the development and evaluation of video-based animal pose estimation and tracking methods, limiting the applications in real world, e.g., understanding animal behavior in wildlife conservation. To fill this gap, we make the first step and propose APT-36K, i.e., the first large-scale benchmark for animal pose estimation and tracking. Specifically, APT-36K consists of 2,400 video clips collected and filtered from 30 animal species with 15 frames for each video, resulting in 36,000 frames in total. After manual annotation and careful double-check, high-quality keypoint and tracking annotations are provided for all the animal instances. Based on APT-36K, we benchmark several representative models on the following three tracks: (1) supervised animal pose estimation on a single frame under intra- and inter-domain transfer learning settings, (2) inter-species domain generalization test for unseen animals, and (3) animal pose estimation with animal tracking. Based on the experimental results, we gain some empirical insights and show that APT-36K provides a useful animal pose estimation and tracking benchmark, offering new challenges and opportunities for future research. The code and dataset will be made publicly available at https://github.com/pandorgan/APT-36K.
Supplementary Material: pdf
URL: https://github.com/pandorgan/APT-36K
Dataset Url: https://github.com/pandorgan/APT-36K
License: CC BY 4.0
Author Statement: Yes
Contribution Process Agreement: Yes
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