Muscle synergy analysis for gesture recognition based on sEMG images and Shapley value

Xiaohu Ao, Feng Wang, Rennong Wang, Jinhua She
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Abstract

Muscle synergy analysis for gesture recognition is a fundamental research area in human-machine interaction, particularly in fields such as rehabilitation. However, previous methods for analyzing muscle synergy are typically not end-to-end and lack interpretability. Specifically, these methods involve extracting specific features for gesture recognition from surface electromyography (sEMG) signals and then conducting muscle synergy analysis based on those features. Addressing these limitations, we devised an end-to-end framework, namely Shapley-value-based muscle synergy (SVMS), for muscle synergy analysis. Our approach involves converting sEMG signals into grayscale sEMG images using a sliding window. Subsequently, we convert adjacent grayscale images into color images for gesture recognition. We then use the gradient-weighted class activation mapping (Grad-CAM) method to identify significant feature areas for sEMG images during gesture recognition. Grad-CAM generates a heatmap representation of the images, highlighting the regions that the model uses to make its prediction. Finally, we conduct a quantitative analysis of muscle synergy in the specific area obtained by Grad-CAM based on the Shapley value. The experimental results demonstrate the effectiveness of our SVMS method for muscle synergy analysis. Moreover, we are able to achieve a recognition accuracy of 94.26% for twelve gestures while reducing the required electrode channel information from ten to six dimensions and the analysis rounds from about 1000 to nine.
基于肌电图和Shapley值的手势识别肌肉协同分析
手势识别中的肌肉协同分析是人机交互的基础研究领域,在康复等领域尤为重要。然而,以前分析肌肉协同作用的方法通常不是端到端的,缺乏可解释性。具体来说,这些方法包括从表面肌电(sEMG)信号中提取用于手势识别的特定特征,然后根据这些特征进行肌肉协同分析。针对这些限制,我们设计了一个端到端框架,即基于shapley值的肌肉协同(SVMS),用于肌肉协同分析。我们的方法包括使用滑动窗口将表面肌电信号转换为灰度表面肌电信号图像。随后,我们将相邻的灰度图像转换为彩色图像进行手势识别。然后,我们使用梯度加权类激活映射(Grad-CAM)方法来识别手势识别过程中肌电信号图像的重要特征区域。Grad-CAM生成图像的热图表示,突出显示模型用于进行预测的区域。最后,我们基于Shapley值对Grad-CAM获得的特定区域的肌肉协同进行定量分析。实验结果证明了支持向量机方法用于肌肉协同分析的有效性。此外,我们能够在将所需的电极通道信息从十维减少到六维,并将分析轮数从大约1000轮减少到9轮的情况下,实现对12种手势的识别准确率为94.26%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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