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AP-10K: A Benchmark for Animal Pose Estimation in the Wild

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Accurate animal pose estimation is an essential step towards understanding animal behavior, and can potentially benefit many downstream applications, such as wildlife conservation. Previous works only focus on specific animals while ignoring the diversity of animal species, limiting the generalization ability. In this paper, we propose AP-10K, the first large-scale benchmark for mammal animal pose estimation, to facilitate the research in animal pose estimation. AP-10K consists of 10,015 images collected and filtered from 23 animal families and 54 species following the taxonomic rank and high-quality keypoint annotations labeled and checked manually. Based on AP-10K, we benchmark representative pose estimation models on the following three tracks: (1) supervised learning for animal pose estimation, (2) cross-domain transfer learning from human pose estimation to animal pose estimation, and (3) intra- and inter-family domain generalization for unseen animals. The experimental results provide sound empirical evidence on the superiority of learning from diverse animals species in terms of both accuracy and generalization ability. It opens new directions for facilitating future research in animal pose estimation. AP-10k is publicly available at https://github.com/AlexTheBad/AP10K.

Hang Yu, Yufei Xu, Jing Zhang, Wei Zhao, Ziyu Guan, Dacheng Tao• 2021

Related benchmarks

TaskDatasetResultRank
Animal Pose EstimationAP-10K Moose
mAP72.6
4
Animal Pose EstimationAP-10K Zebra
mAP70.8
4
Animal Pose EstimationAP-10K Chimpanzee
mAP0.55
4
Animal Pose EstimationAP-10K Gorilla
mAP66.2
4
Animal Pose EstimationAP-10K Deer
mAP75.1
4
Animal Pose EstimationAP-10K Horse
mAP71.8
4
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