3260 papers • 126 benchmarks • 313 datasets
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A pseudo-ground-truth annotator based on CLIFF is proposed, which provides high-quality 3D annotations for in-the-wild 2D datasets and offers crucial full supervision for regression-based methods.
A novel neural representation of multi-person 3D pose which unifies the position of person instances with their corresponding3D pose representation is adopted which yields a superior trade-off between speed and performance, compared to prior top-down approaches.
A novel method based on teacher-student learning framework for 3D human pose estimation without any 3D annotation or side information is proposed and reduces the 3D joint prediction error compared to state-of-the-art unsupervised methods and also outperforms many weakly- supervised methods that use side information on Human3.6M.
An unsupervised approach that learns to predict a 3D human pose from a single image while only being trained with 2D pose data, which can be crowd-sourced and is already widely available is proposed.
This work proposes a unified framework that leverages mask as supervision for unsupervised 3D pose estimation that employs skeleton and physique representations that exploit accurate pose information from coarse to fine.
Experimental results show that the key-idea is to employ non-occluded human data to learn a joint-level spatial-temporal motion prior that reduces the ambiguities of occlusions and is robust to diverse occlusion types, which is then adopted to assist the occluded human motion capture.
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