2021
DOI: 10.48550/arxiv.2109.08730
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Unsupervised View-Invariant Human Posture Representation

Faegheh Sardari,
Björn Ommer,
Majid Mirmehdi

Abstract: Most recent view-invariant action recognition and performance assessment approaches rely on a large amount of annotated 3D skeleton data to extract view-invariant features. However, acquiring 3D skeleton data can be cumbersome, if not impractical, in in-the-wild scenarios. To overcome this problem, we present a novel unsupervised approach that learns to extract view-invariant 3D human pose representation from a 2D image without using 3D joint data. Our model is trained by exploiting the intrinsic view-invarian… Show more

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References 36 publications
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