Cross-correlation based feature extraction from EMG signals for classification of neuro-muscular diseases

R. Bose, Kaniska Samanta, S. Chatterjee
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引用次数: 19

Abstract

In this contribution, classification of two main neuromuscular diseases namely Myopathy and Neuropathy and Healthy signals is performed using cross-correlation based feature extraction technique. For this purpose, cross-correlation of Healthy, Myopathy and Neuropathy disease EMG signal is done with a reference Healthy signal. Selective features like Hjorth, Adaptive Autoregressive and statistical features comprising mean, standard deviation and power are extracted from the cross-correlated signals. Support Vector Machine(SVM) and k-Nearest Neighbor(kNN) are the two classifiers used for this work. Highest classification accuracy of 100% is obtainedby SVM using Gaussian Radial Basis Function (RBF) as the kernel function with AAR and all combined features as the feature set. For kNN, k=4 yields best result of 100% accuracy using the combined feature set.
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基于相互关联的肌电信号特征提取用于神经肌肉疾病分类
在这篇贡献中,两种主要的神经肌肉疾病即肌病和神经病变和健康信号的分类是使用基于相互关联的特征提取技术进行的。为此,将健康、肌病和神经病的肌电图信号与参考健康信号进行相互关联。从交叉相关信号中提取Hjorth、Adaptive Autoregressive等选择性特征和均值、标准差、功率等统计特征。支持向量机(SVM)和k近邻(kNN)是用于这项工作的两个分类器。以高斯径向基函数(RBF)为核函数,以AAR和所有组合特征为特征集,SVM的分类准确率最高,达到100%。对于kNN, k=4使用组合特征集产生100%准确率的最佳结果。
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Design and development of portable galvanic skin response acquisition and analysis system Motion for lower limb Exoskeleton based on predefined gait data Realization of a 1.5 bits/stage pipeline ADC using switched capacitor technique An overview of synchrophasors and their applications in smart grids Cross-correlation based feature extraction from EMG signals for classification of neuro-muscular diseases
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