Using myoelectric signals to recognize grips and movements of the hand

G. Shuman, Zoran Duric, Daniel Barbará, Jessica Lin, L. Gerber
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引用次数: 3

Abstract

People want to live independently, but too often disabilities or advanced age robs them of the ability to do the necessary activities of daily living (ADLs). Finding relationships between electromyograms measured in the arm and movements of the hand and wrist needed to perform ADLs can help address performance deficits and be exploited in designing myoelectrical control systems for prosthetics and computer interfaces. This paper reports on several machine learning techniques employed to discover the electromyogram patterns present when using the hand to perform 14 typical fine motor functional activities used to accomplish ADLs. Classification and clustering techniques are employed. Improvements to accuracies are introduced, including the use of exponential smoothing and using a symbolic representation to approximate signal streams. Results show the patterns can be learned to an accuracy of approximately 77% for a 15 class problem and the symbolic representation shows the potential for future improvement in accuracies.
使用肌电信号来识别握持和手部动作
人们希望独立生活,但往往残疾或高龄剥夺了他们进行必要的日常生活活动(ADLs)的能力。发现手臂肌电图测量与执行adl所需的手和手腕运动之间的关系可以帮助解决性能缺陷,并用于设计假肢和计算机接口的肌电控制系统。本文报告了几种机器学习技术,用于发现使用手执行用于完成adl的14种典型精细运动功能活动时呈现的肌电图模式。采用了分类和聚类技术。介绍了对精度的改进,包括使用指数平滑和使用符号表示来近似信号流。结果表明,对于一个15类问题,模式的学习准确率可以达到约77%,符号表示显示了未来准确性的提高潜力。
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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