Human–robot interface based on sEMG envelope signal for the collaborative wearable robot

Ziyu Liao , Bai Chen , Dongming Bai , Jiajun Xu , Qian Zheng , Keming Liu , Hongtao Wu
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引用次数: 4

Abstract

Surface electromyography (sEMG) control interface is a common method for human-centered robotics. Researchers have frequently improved the recognition accuracy of sEMG through multichannel or high-precision signal acquisition devices. However, this increases the cost and complexity of the control system. Therefore, this study developed a control interface based on the sEMG enveloped signal for a collaborative wearable robot to improve the accuracy of sEMG recognition based on the time-domain (TD) features. Specifically, an acquisition device is developed to obtain the sEMG envelope signal, and 11 types of TD features are extracted from the sEMG envelope signal acquired from the upper limb. Furthermore, a dimension reduction method based on the correlation coefficient is proposed, transforming the 11-dimensional feature into a five-dimensional envelope feature set without decreasing the accuracy. Moreover, a recognition algorithm based on a neural network has also been proposed for gesture classification. Finally, the recognition accuracy of the proposed method, principal component analysis (PCA) feature set, and Hudgins TD feature set is compared, with their accuracy at 84.39%, 72.44%, and 70.89%, respectively. Therefore, the results indicate that the envelope feature set performs better than the common gesture recognition method based on signal channel sEMG envelope signal.

基于表面肌电信号包络信号的协同可穿戴机器人人机界面
表面肌电(sEMG)控制界面是以人为中心的机器人的常用方法。研究人员经常通过多通道或高精度信号采集设备来提高sEMG的识别精度。然而,这增加了控制系统的成本和复杂性。因此,本研究为协同穿戴机器人开发了一种基于表面肌电包络信号的控制接口,以提高基于时域(TD)特征的表面肌电识别的准确性。具体地,开发了一种获取装置来获得sEMG包络信号,并且从从上肢获取的sEMG信号中提取11种类型的TD特征。此外,提出了一种基于相关系数的降维方法,在不降低精度的情况下,将11维特征转换为5维包络特征集。此外,还提出了一种基于神经网络的手势识别算法。最后,对所提出的方法、主成分分析(PCA)特征集和Hudgins TD特征集的识别精度进行了比较,其准确率分别为84.39%、72.44%和70.89%。因此,结果表明,包络特征集的性能优于基于信号通道sEMG包络信号的常用手势识别方法。
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