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Identification of Arm Movements Using Statistical Features from EEG Signals in Wavelet Packet Domain

机译:使用小波包域中的EEG信号统计特征识别臂运动

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In this paper, a method to classify arm movements using statistical features of electroencephalogram (EEG) signals calculated from wavelet packet and Fourier transforms, has been proposed. The EEG signals are analyzed using bi-orthogonal wavelet packet family. Fourier transform is then applied to the corresponding detail coefficients and higher order statistical moment named kurtosis is calculated from the magnitude of the Fourier components. The features are shown to be distinguishable for the EEG signals of four different arm movements. K-nearest neighbor (KNN)-based classifiers are developed using these features to identify the arm movements, right hand forward and backward; left hand forward and backward. A mean accuracy of 92.84% is achieved which is shown to be better than some existing techniques.
机译:在本文中,已经提出了一种使用从小波包和傅里叶变换计算的脑电图(EEG)信号的统计特征来分类ARM运动的方法。使用双正交小波包系列分析EEG信号。然后将傅里叶变换应用于相应的细节系数,并且从傅立叶组件的大小计算名为Kurtosis的更高阶统计矩。该特征被证明可用于四个不同臂运动的脑电图信号。基于k-collect邻居(KNN)的分类器是使用这些功能开发的,以识别臂运动,右手向前和向后;向前和向后左手。实现了92.84%的平均准确性,其显示出比某些现有技术更好。

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