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Decomposition of EMG signals using time-frequency features

机译:使用时频特征分解EMG信号

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摘要

The decomposition of intramuscular myoelectric (EMG) signals can be considered as a classification problem. The main effects which decrease the classification performance are Motor Unit Action Potential (MUAP) shimmer and overlapping MUAPs. In this paper we show how time-frequency information can be extracted to reduce MUAP shimmer and propose a criterion to detect overlapping MUAPs. Because of the information extraction and detection of compound MUAPs, the classification problem can be reduced to a detection problem of highly isolated cluster points. Tests with EMG recordings yield very good results.
机译:肌肉内电气电(EMG)信号的分解可以被认为是分类问题。降低分类性能的主要效果是电机单元动作电位(MUAP)光线和重叠的minaps。在本文中,我们示出了如何提取时频信息以减少Muap闪光,并提出标准来检测重叠的MUAP。由于信息提取和检测化合物MUAP,可以减少分类问题到高度隔离的聚类点的检测问题。用EMG录音测试产生非常好的结果。

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