University of Wollongong
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A Two-Stream Neural Network for Pose-Based Hand Gesture Recognition

journal contribution
posted on 2024-11-17, 13:13 authored by Chuankun Li, Shuai Li, Yanbo Gao, Xiang Zhang, Wanqing Li
Pose-based hand gesture recognition has been widely studied in the recent years. Compared with full body action recognition, hand gesture involves joints that are more spatially closely distributed with stronger collaboration. This nature requires a different approach from action recognition to capturing the complex spatial features. Many gesture categories, such as 'Grab' and 'Pinch,' have very similar motion or temporal patterns posing a challenge on temporal processing. To address these challenges, this article proposes a two-stream neural network with one stream being a self-attention-based graph convolutional network (SAGCN) extracting the short-term temporal information and hierarchical spatial information, and the other being a residual-connection-enhanced bidirectional independently recurrent neural network (IndRNN) for extracting long-term temporal information. The SAGCN has a dynamic self-attention mechanism to adaptively exploit the relationships of all hand joints in addition to the fixed topology and local feature extraction in the GCNs. The proposed method effectively takes advantage of the GCN and IndRNN to capture the temporal-spatial information. The widely used Dynamic Hand Gesture dataset (two evaluation protocols) and First-Person Hand Action dataset are used to validate its effectiveness and our method achieves state-of-the-art performance with 96.31%, 94.05%, and 90.26%, respectively, in terms of recognition accuracy.

Funding

National Natural Science Foundation of China (61901083)

History

Journal title

IEEE Transactions on Cognitive and Developmental Systems

Volume

14

Issue

4

Pagination

1594-1603

Language

English

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