4.6 Article

View Enhanced Jigsaw Puzzle for Self-Supervised Feature Learning in 3D Human Action Recognition

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 36385-36396

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3165040

Keywords

Task analysis; Skeleton; Feature extraction; Training; Representation learning; Three-dimensional displays; Image recognition; Action recognition; self-supervised learning; multi-view; pretext task; human skeleton; gate recurrent unit

Funding

  1. National Key Research and Development Program of China [2018YFB2003200, 2018YFB2003500]

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A novel self-supervised learning method is proposed in this study, which introduces the view enhanced jigsaw puzzle (VEJP) pretext task and the view pooling encoder (VPE) to improve feature learning. Experimental results show that moderately difficult pretext tasks can effectively enhance feature learning.
Self-supervised learning methods have received much attention in skeleton-based human action recognition. These methods rely on pretext tasks to utilize unlabeled data and learn an effective feature encoder. In this paper, a novel self-supervised learning method is proposed. First, we design a new pretext task called view enhanced jigsaw puzzle (VEJP) to improve the learning difficulty of the encoder. The VEJP introduces multi-view information into the jigsaw puzzle, thus forcing the encoder to learn view-independent high-level features of human skeletons. Based on the encoder trained by VEJP, we propose the view pooling encoder (VPE) to integrate the information of multiple views with the pooling mechanism, and the features extracted by VPE are more robust and distinguishable. In addition, by adjusting the difficulty of VEJP, the influence of the pretext task difficulty on the downstream task performance is studied, and the experimental results show that the pretext tasks should be moderately difficult to achieve effective feature learning. Our method achieves competitive results on representative benchmark datasets. It provides a strong baseline for the jigsaw puzzle task and shows advantages in situations where the number of labeled data is minimal.

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