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Description
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1. Overview (basic ideas)
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2. Novelty
- Develops a framework for mapping 2D poses to probabilistic embeddings where
- (1) 2D pose embedding distances correspond to their similarities in absolute 3D pose space
- (2) a single model embeds different pose visibility patterns, such as those
from occlusions - (3) probabilistic embeddings capture input ambiguity.
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3. Method (Technical details)
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4. Results
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5. links to papers, codes, etc.
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6. Thoughts, Comments
- This paper has showed that it is important to incorporate many tasks in order to learn robust pose embeddings. I don't think there is a better way to learn pose embeddings since the human body has a very complex structure.
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7. bibtex
- @misc{liu2020viewinvariant,
- title={View-Invariant, Occlusion-Robust Probabilistic Embedding for Human Pose},
- author={Ting Liu and Jennifer J. Sun and Long Zhao and Jiaping Zhao and Liangzhe Yuan and Yuxiao Wang and Liang-Chieh Chen and Florian Schroff and Hartwig Adam},
- year={2020},
- eprint={2010.13321},
- archivePrefix={arXiv},
- primaryClass={cs.CV}
- }
- @misc{liu2020viewinvariant,
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8. Related Papers


