Muscle Activity Distribution Features Extracted from HD sEMG to Perform Forearm Pattern Recognition

F. Nougarou, Alexandre Campeau-Lecours, R. Islam, Daniel Massicotte, Benoit Gosselin
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引用次数: 11

Abstract

An efficient pattern recognition system based exclusively on forearm surface Electromyographic (sEMG) signals is proposed to provide a more intuitive control of a robotic arm used by some of the disabled. The main contribution of this paper is the use of an original set of features characterizing the muscle activity distribution obtained with high-density sEMG (HD sEMG) sensors. Contrary to simple sEMG, HD sEMG can produce muscle activity images with spatial distributions that differ according to forearm movement. In order to translate this distribution, the proposed set of features includes the center of gravity, the mean amplitude and the percentage of influence computed in each HD sEMG image divided in sub-images. Based on these features, the recognition system locates nine forearm movements with high classification accuracies (99.23%). The results in terms of the number of learning data, the image resolutions (spatial filtering) and the number of sub-images demonstrate the potential of the proposed recognition system and its good performance-complexity trade-off.
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从高清表面肌电信号中提取肌肉活动分布特征进行前臂模式识别
提出了一种基于前臂表面肌电图(sEMG)信号的高效模式识别系统,为一些残疾人使用的机械臂提供更直观的控制。本文的主要贡献是使用了高密度表面肌电信号(HD sEMG)传感器获得的一组原始特征来表征肌肉活动分布。与简单的表面肌电信号不同,高清表面肌电信号可以产生肌肉活动图像,其空间分布随前臂运动的不同而不同。为了转换这种分布,所提出的特征集包括在每个HD肌电信号图像中计算的重心、平均振幅和影响百分比,并将其划分为子图像。基于这些特征,识别系统定位了9个前臂动作,分类准确率高达99.23%。在学习数据数量、图像分辨率(空间滤波)和子图像数量方面的结果表明了所提出的识别系统的潜力及其良好的性能-复杂性权衡。
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