Published June 2021 | Version Accepted Version
Book Section - Chapter Open

Learning View-Disentangled Human Pose Representation by Contrastive Cross-View Mutual Information Maximization

  • 1. ROR icon Rutgers, The State University of New Jersey
  • 2. ROR icon Google (United States)
  • 3. ROR icon California Institute of Technology
  • 4. ROR icon University of Delaware

Abstract

We introduce a novel representation learning method to disentangle pose-dependent as well as view-dependent factors from 2D human poses. The method trains a network using cross-view mutual information maximization (CV-MIM) which maximizes mutual information of the same pose performed from different viewpoints in a contrastive learning manner. We further propose two regularization terms to ensure disentanglement and smoothness of the learned representations. The resulting pose representations can be used for cross-view action recognition.To evaluate the power of the learned representations, in addition to the conventional fully-supervised action recognition settings, we introduce a novel task called single-shot cross-view action recognition. This task trains models with actions from only one single viewpoint while models are evaluated on poses captured from all possible viewpoints. We evaluate the learned representations on standard benchmarks for action recognition, and show that (i) CV-MIM performs competitively compared with the state-of-the-art models in the fully-supervised scenarios; (ii) CV-MIM outperforms other competing methods by a large margin in the single-shot cross-view setting; (iii) and the learned representations can significantly boost the performance when reducing the amount of supervised training data. Our code is made publicly available at https://github.com/google-research/google-research/tree/master/poem.

Additional Information

© 2021 IEEE. This work was done while the author was a research intern at Google.

Attached Files

Accepted Version - 2012.01405.pdf

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Identifiers

Eprint ID
112724
Resolver ID
CaltechAUTHORS:20220105-801103900

Funding

Google

Dates

Created
2022-01-09
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Updated
2022-07-25
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