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This research proposes a novel graph convolutional network (GCN) architecture called EMS-TAGCN (Extended Multi-stream Temporal-attention Adaptive GCN) for skeleton-based human action recognition (HAR) that outperforms previous methods by incorporating bone information, adaptive graph topology, and a spatial-temporal-channel attention mechanism.
Mehmood, F., Guo, X., Chen, E., Akbar, M. A., Khan, A. A., & Ullah, S. (Year). Extended multi-stream temporal-attention module for skeleton-based human action recognition (HAR).
This research aims to develop a more accurate and adaptable GCN model for skeleton-based human action recognition by integrating multiple skeletal data modalities, dynamically adapting graph topology, and incorporating a spatial-temporal-channel attention mechanism.