Spatiotemporal Decouple-and-Squeeze Contrastive Learning for Semi-Supervised Skeleton-based Action Recognition
Binqian Xu, Xiangbo Shu

TL;DR
This paper introduces SDS-CL, a novel contrastive learning framework that decouples spatiotemporal features for semi-supervised skeleton-based action recognition, leading to improved representation learning and performance.
Contribution
The paper proposes a spatiotemporal decoupling and contrastive learning framework with new attention mechanisms and loss functions to better capture action-specific features.
Findings
Achieves superior performance on four public datasets.
Effectively decouples spatial and temporal features.
Improves action recognition accuracy.
Abstract
Contrastive learning has been successfully leveraged to learn action representations for addressing the problem of semi-supervised skeleton-based action recognition. However, most contrastive learning-based methods only contrast global features mixing spatiotemporal information, which confuses the spatial- and temporal-specific information reflecting different semantic at the frame level and joint level. Thus, we propose a novel Spatiotemporal Decouple-and-Squeeze Contrastive Learning (SDS-CL) framework to comprehensively learn more abundant representations of skeleton-based actions by jointly contrasting spatial-squeezing features, temporal-squeezing features, and global features. In SDS-CL, we design a new Spatiotemporal-decoupling Intra-Inter Attention (SIIA) mechanism to obtain the spatiotemporal-decoupling attentive features for capturing spatiotemporal specific information by…
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Taxonomy
TopicsHuman Pose and Action Recognition · Gait Recognition and Analysis · Stroke Rehabilitation and Recovery
MethodsContrastive Learning
