TokenPose: Learning Keypoint Tokens for Human Pose Estimation
Human pose estimation deeply relies on visual clues and anatomical constraints between parts to locate keypoints. Most existing CNN-based methods do well in visual representation, however, lacking in the ability to explicitly learn the constraint relationships between keypoints. In this paper, we pr...
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Zusammenfassung: | Human pose estimation deeply relies on visual clues and anatomical
constraints between parts to locate keypoints. Most existing CNN-based methods
do well in visual representation, however, lacking in the ability to explicitly
learn the constraint relationships between keypoints. In this paper, we propose
a novel approach based on Token representation for human Pose
estimation~(TokenPose). In detail, each keypoint is explicitly embedded as a
token to simultaneously learn constraint relationships and appearance cues from
images. Extensive experiments show that the small and large TokenPose models
are on par with state-of-the-art CNN-based counterparts while being more
lightweight. Specifically, our TokenPose-S and TokenPose-L achieve $72.5$ AP
and $75.8$ AP on COCO validation dataset respectively, with significant
reduction in parameters ($\downarrow80.6\%$; $\downarrow$ $56.8\%$) and GFLOPs
($\downarrow$ $75.3\%$; $\downarrow$ $24.7\%$). Code is publicly available. |
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DOI: | 10.48550/arxiv.2104.03516 |