Interpretable analysis of feature importance and implicit correlation based on sEMG grayscale. images

AO Xiaohu, Feng Wang, Juan Zhao, Jinhua She
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Abstract

For patients requiring upper limb rehabilitation, the hand rehabilitation robot assists the patient in completing movements within a certain training trajectory to achieve therapeutic results. There have been studies based on deep learning to convert surface electromyography (sEMG) signals into sEMG images for motion intention analysis. Although good recognition accuracy has been achieved, the working principle of neural networks and the processing of image features by the networks are not well explained. The interpretability of deep neural networks determines human confidence in neural network decisions. In this paper, we design a method based on feature importance and implicit correlation for hand motion intention recognition, experimentally explored that convolutional neural networks have implicit definitions for sEMG grayscale images of the same hand gesture action, and verified the effectiveness of the designed method.
基于 sEMG 灰度图像的特征重要性和隐含相关性的可解释性分析。
对于需要进行上肢康复的患者,手部康复机器人可以协助患者在一定的训练轨迹内完成动作,从而达到治疗效果。已有研究基于深度学习将表面肌电图(sEMG)信号转换为sEMG图像,用于运动意向分析。虽然已经取得了很好的识别精度,但神经网络的工作原理和网络对图像特征的处理并没有得到很好的解释。深度神经网络的可解释性决定了人类对神经网络决策的信心。本文设计了一种基于特征重要性和隐含相关性的手部动作意向识别方法,实验探索了卷积神经网络对同一手势动作的 sEMG 灰度图像具有隐含定义,并验证了所设计方法的有效性。
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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