A Graph Convolutional Network with Ensemble Classifiers for 2D Skeleton-based Action Recognition

Youzhi Jiang,Cuiwei Liu,Zhuo Yan

2023 38th Youth Academic Annual Conference of Chinese Association of Automation (YAC)(2023)

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摘要
In this paper, we address the problem of action recognition from 2D skeletons produced by pose estimation algorithms. In practical applications, inaccurate joint information is inevitable due to self-occlusion and interaction with objects, which pose great challenges to 2D skeleton-based action recognition. To this end, we propose a graph convolutional network with ensemble classifiers to improve the robustness against noisy skeleton data. A global classifier learned from representations of the entire skeleton can capture the overall movement of the human body, while a set of part-based classifiers focuses on crucial local motion patterns. To further explore the correlations among joints within a part, we apply a self-attention mechanism to obtain context-aware part representations. Considering the existence of noisy joints, we develop a confidence-based weighting strategy to suppress classifiers based on inaccurate part representations. Experiments on the large-scale NTU-RGB+D dataset verify that the ensemble classifiers can boost the action recognition performance, especially on low-quality skeleton data with dense noise.
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关键词
2D skeleton-based action recognition,graph convolutional networks,ensemble classifiers,self-attention mechanism
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