Paper
9 February 2024 Expandable residual attention-based high-performance embedded gesture recognition
Shuyu Chen
Author Affiliations +
Proceedings Volume 13073, Third International Conference on High Performance Computing and Communication Engineering (HPCCE 2023); 130731L (2024) https://doi.org/10.1117/12.3026666
Event: Third International Conference on High Performance Computing and Communication Engineering (HPCCE 2023), 2023, Changsha, China
Abstract
In embedded human-computer interaction systems, the development of high-performance gesture recognition technology is crucial due to its demand for low power consumption and efficient processing. Addressing the challenge of highprecision gesture recognition in complex backgrounds, a high-performance embedded gesture recognition method based on the Expandable Residual Attention mechanism is proposed. This method enhances the capability of extracting differentscale gesture features by introducing the Expandable Residual Attention mechanism into YOLOv7. Additionally, to address the characteristics of high degrees of freedom and self-occlusion in hand gestures, SoftNMS is introduced with a penalty term to effectively reduce the probability of target omissions. Finally, the gesture recognition model is compressed and accelerated with TensorRT. Experimental results on the Jochen Triesch Static Hand Posture Database demonstrate that the proposed method significantly improves gesture recognition accuracy while maintaining high inference efficiency.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Shuyu Chen "Expandable residual attention-based high-performance embedded gesture recognition", Proc. SPIE 13073, Third International Conference on High Performance Computing and Communication Engineering (HPCCE 2023), 130731L (9 February 2024); https://doi.org/10.1117/12.3026666
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KEYWORDS
Gesture recognition

Object detection

Embedded systems

Human computer interaction

Feature extraction

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