The real-time recognition of upper limb micro motions based on sEMG signals

Changcheng Shi, Sijia Ye, Yehao Ma, Guokun Zuo
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Abstract

Myoelectric interface offers a promising tool for detecting motion intention and extent of movement effort. However, how to achieve motion intention recognition accurately and fast using electromyography (EMG) is an important issue. Many studies present great recognition accuracy, while there is few studies focus on motion recognition speed improvement through exploring motion trend (micro motion) decoding, which is of key importance for the online control strategy of rehabilitation robot. In this paper, we explored the performance of machine learning algorithm in micro motion recognition. The performance of support vector machine (SVM) model was tested for five upper-limb micro motions. As a result, the SVM-based model provides satisfying online performance across all the subjects and motions, achieving an accuracy of 89.7±3.9 % and a total motion recognition time of 0.74±0.08 s. The results show that machine learning algorithm combined with EMG technology can provide accurate and fast upper-limb micro motion intention recognition.
基于表面肌电信号的上肢微运动实时识别
肌电接口为检测运动意图和运动力度提供了一种很有前途的工具。然而,如何准确、快速地利用肌电图实现运动意图识别是一个重要的问题。许多研究表明识别精度很高,但很少有研究通过探索运动趋势(微运动)解码来提高运动识别速度,这对康复机器人的在线控制策略至关重要。本文探讨了机器学习算法在微运动识别中的性能。对支持向量机(SVM)模型进行了5种上肢微运动的性能测试。结果表明,基于支持向量机的模型在所有被试和运动中都能提供令人满意的在线性能,准确率达到89.7±3.9%,总运动识别时间为0.74±0.08 s。结果表明,结合肌电图技术的机器学习算法能够提供准确、快速的上肢微运动意图识别。
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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