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Bottom-up human pose estimation methods have difficulties in predicting the correct pose for small persons due to challenges in scale variation. In this paper, we present HigherHRNet: a novel bottom-up human pose estimation method for learning scale-aware representations using high-resolution feature pyramids. Equipped with multi-resolution supervision for training and multi-resolution aggregation for inference, the proposed approach is able to solve the scale variation challenge in bottom-up multi-person pose estimation and localize keypoints more precisely, especially for small person. The feature pyramid in HigherHRNet consists of feature map outputs from HRNet and upsampled higher-resolution outputs through a transposed convolution. HigherHRNet outperforms the previous best bottom-up method by 2.5% AP for medium person on COCO test-dev, showing its effectiveness in handling scale variation. Furthermore, HigherHRNet achieves new state-of-the-art result on COCO test-dev (70.5% AP) without using refinement or other post-processing techniques, surpassing all existing bottom-up methods. HigherHRNet even surpasses all top-down methods on CrowdPose test (67.6% AP), suggesting its robustness in crowded scene.
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Bowen Cheng
Shanghai Institute of Microsystem and Information Technology
Bin Xiao
Chongqing University of Posts and Telecommunications
Jingdong Wang
Hefei University of Technology
University of Oregon
Microsoft Research (United Kingdom)
International University of the Caribbean
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Cheng et al. (Mon,) studied this question.
synapsesocial.com/papers/69dbeca840b636d1dda3c4eb — DOI: https://doi.org/10.1109/cvpr42600.2020.00543
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