Deep Neural Network for Electromyography Signal Classification via Wearable Sensors

Ying Chang, Lan Wang, Lingjie Lin, Ming Liu
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引用次数: 0

Abstract

The human-computer interaction has been widely used in many fields, such intelligent prosthetic control, sports medicine, rehabilitation medicine, and clinical medicine. It has gradually become a research focus of social scientists. In the field of intelligent prosthesis, sEMG signal has become the most widely used control signal source because it is easy to obtain. The off-line sEMG control intelligent prosthesis needs to recognize the gestures to execute associated action. In order solve this issue, this paper adopts a CNN plus BiLSTM to automatically extract sEMG features and recognize the gestures. The CNN plus BiLSTM can overcome the drawbacks in the manual feature extraction methods. The experimental results show that the proposed gesture recognition framework can extract overall gesture features, which can improve the recognition rate.
基于穿戴式传感器的肌电信号分类的深度神经网络
人机交互已广泛应用于假肢智能控制、运动医学、康复医学、临床医学等领域。它逐渐成为社会科学家的研究热点。在智能假肢领域,表面肌电信号因其易于获取而成为应用最广泛的控制信号源。离线表面肌电信号控制智能假肢需要识别手势来执行相关动作。为了解决这一问题,本文采用CNN + BiLSTM自动提取表面肌电信号特征并进行手势识别。CNN + BiLSTM可以克服人工特征提取方法的缺点。实验结果表明,所提出的手势识别框架能够提取出整体的手势特征,提高了识别率。
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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