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Extraction and analysis of multiple time window features associated with muscle fatigue conditions using sEMG signals

机译:使用sEMG信号提取和分析与肌肉疲劳状况相关的多个时间窗口特征

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In this work, an attempt has been made to differentiate surface electromyography (sEMG) signals under muscle fatigue and non-fatigue conditions with multiple time window (MTW) features. sEMG signals are recorded from biceps brachii muscles of 50 volunteers. Eleven MTW features are extracted from the acquired signals using four window functions, namely rectangular windows, Hamming windows, trapezoidal windows, and Slepian windows. Prominent features are selected using genetic algorithm and information gain based ranking. Four different classification algorithms, namely naieve Bayes, support vector machines, k-nearest neighbour, and linear discriminant analysis, are used for the study. Classifier performances with the MTW features are compared with the currently used time- and frequency-domain features. The results show a reduction in mean and median frequencies of the signals under fatigue. Mean and variance of the features differ by an order of magnitude between the two cases considered. The number of features is reduced by 45% with the genetic algorithm and 36% with information gain based ranking. The k-nearest neighbour algorithm is found to be the most accurate in classifying the features, with a maximum accuracy of 93% with the features selected using information gain ranking.
机译:在这项工作中,已经尝试在具有多个时间窗(MTW)功能的肌肉疲劳和非疲劳条件下区分表面肌电图(sEMG)信号。从50名志愿者的肱二头肌肌肉中记录了sEMG信号。使用四个窗口函数(即矩形窗口,汉明窗口,梯形窗口和Slepian窗口)从采集的信号中提取11个MTW特征。使用遗传算法和基于信息增益的排名选择突出的特征。该研究使用了四种不同的分类算法,即朴素贝叶斯,支持向量机,k最近邻和线性判别分析。将具有MTW功能的分类器性能与当前使用的时域和频域功能进行比较。结果显示疲劳下信号的平均频率和中值频率降低。在所考虑的两种情况之间,特征的均值和方差相差一个数量级。遗传算法将特征数量减少了45%,基于信息增益的排名减少了36%。发现k近邻算法在特征分类中最准确,对于使用信息增益排名选择的特征,其最大准确度为93%。

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