A performance comparison of hand motion EMG classification

Sungtae Shin, R. Tafreshi, R. Langari
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引用次数: 24

Abstract

Powered prosthesis is of considerable value to amputees to enable them to perform their daily-life activities with convenience. One of applicable control signals for controlling a powered prosthesis is the myoelectric signal. A number of commercial products have been developed that utilize myoelectric control for powered prostheses; however, the functionality of these devices is still insufficient to satisfy the needs of amputees. For the purpose of a comparison, several electromyogram classification methods have been studied in this paper. The performance criteria included not only classification accuracy, but also repeatability and robustness of the classifier, training time for online training performance, and computational time for real-time operation were evaluated with seven classification algorithms. The study included five different feature sets with time-domain feature values and autoregressive model coefficients. In summary, the quadratic discriminant analysis showed a remarkable performance in terms of high classification accuracy, high robustness, and low computational time of training and classification from the experiment results.
手部运动肌电图分类的性能比较
动力义肢对于截肢者来说有很大的价值,使他们能够方便地进行日常生活活动。肌电信号是控制动力假肢的一种有效的控制信号。许多商业产品已经开发出来,利用肌电控制的动力假肢;然而,这些装置的功能仍然不足以满足截肢者的需求。为了比较,本文对几种肌电图分类方法进行了研究。性能指标不仅包括分类精度,还包括分类器的可重复性和鲁棒性、在线训练性能的训练时间和实时运行的计算时间。该研究包括5个不同的特征集,具有时域特征值和自回归模型系数。综上所述,从实验结果来看,二次判别分析在分类精度高、鲁棒性强、训练和分类计算时间短等方面表现出了显著的性能。
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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