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A preliminary investigation of the effect of force variation for myoelectric control of hand prosthesis

机译:力变化对手部假体肌电控制效果的初步研究

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The myoelectric control of prostheses has been an important area of research for the past 40 years. Significant advances have been achieved with Pattern Recognition (PR) systems regarding the number of movements to be classified with high accuracy. However, practical robustness still needs further research. This paper focuses on investigating the effect of the change in force levels by transradial amputee persons on the performance of PR systems. Two below-elbow amputee persons participated in the study. Three levels of forces (low, medium, and high) were recorded for different hand grips with the help of visual feedback from the Electromyography (EMG) signals. Results showed that changing the force level degraded the performance of the myoelectric control system by up to 60% with 12 EMG channels for 4 hand grips and a rest position. We investigated different EMG feature sets in combination with a Linear Discriminant Analysis (LDA) classifier. The performance was slightly better with Time Domain (TD) features compared to Auto Regression (AR) coefficients and Root Mean Square (RMS) features. Finally, the error of the classification was considerably reduced to approximately 17% when the PR system was trained with all force levels.
机译:在过去的40年中,假体的肌电控制一直是重要的研究领域。模式识别(PR)系统在要精确分类的运动数量方面取得了重大进展。但是,实用的鲁棒性仍需要进一步研究。本文重点研究经trans截肢者的力量水平变化对PR系统性能的影响。两名肘部以下截肢者参加了研究。在来自肌电图(EMG)信号的视觉反馈的帮助下,针对不同的手柄记录了三个级别的力(低,中和高)。结果表明,改变力的水平会使肌电控制系统的性能下降多达60%,其中有12个EMG通道(4个手柄和一个静止位置)。我们结合线性判别分析(LDA)分类器研究了不同的EMG功能集。与自回归(AR)系数和均方根(RMS)功能相比,时域(TD)功能的性能稍好。最终,当在所有力量水平下训练PR系统时,分类的错误被大大降低到大约17%。

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