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A Machine Learning System for Classification of EMG Signals to Assist Exoskeleton Performance

机译:一种用于对肌电信号进行分类以辅助外骨骼表现的机器学习系统

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A surface electromyographic signal can provide information on neuromuscular activity and can be used as an input in a myoelectric control system for applications such as orthotic exoskeletons. In this process, a key step is to extract useful information from the EMG signals using the pattern recognition tools. Our research focus is on identification of a set of relevant features for efficient EMG signal classification. Specifically in this work, from the pre-processed myoelectric signals, we extracted auto regression coefficients, different time-domain features such as Hjorth features, integral absolute value, mean absolute value, root mean square and cepstral features. Next a subset consisting of a few selected features are fed to the multiclass SVM classifier. Using a radial basis function kernel a classification accuracy of 92.3% has been achieved.
机译:表面肌电信号可提供有关神经肌肉活动的信息,并可在肌电控制系统中用作输入,例如矫正外骨骼。在此过程中,关键步骤是使用模式识别工具从EMG信号中提取有用的信息。我们的研究重点是为有效的EMG信号分类识别一组相关功能。具体而言,在这项工作中,我们从预处理的肌电信号中提取了自回归系数,不同的时域特征,例如Hjorth特征,积分绝对值,平均绝对值,均方根和倒频谱特征。接下来,由几个选定特征组成的子集被馈送到多类SVM分类器。使用径向基函数核,已达到92.3%的分类精度。

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