首页> 外文期刊>Universal Journal of Biomedical Engineering >Identification of Motor Imagery Movements from EEG Signals Using Automatically Selected Features in the Dual Tree Complex Wavelet Transform Domain
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Identification of Motor Imagery Movements from EEG Signals Using Automatically Selected Features in the Dual Tree Complex Wavelet Transform Domain

机译:使用双树复数小波变换域中的自动选择特征从脑电信号中识别运动图像运动

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The decoding of human brain electrical functions by electroencephalogram (EEG) signal is the most important step in brain computer interface (BCI) based systems. So, in this paper, an automatic feature selection method has been proposed to classify imagery left and right hand movements from the EEG signals in the Dual Tree Complex Wavelet Transform domain. First, the EEG signals are decomposed into several bands of real and imaginary coefficients and then, some statistical features like Shannon entropy and variance have been calculated. These features are combined into a single feature space and after that optimal features have been selected automatically imposing some feature selection criteria from this combined feature space. The selected features have been shown to be promising to distinguish different kinds of EEG signals by statistical hypothesis testing (e.g., one way ANOVA) as well as graphical analysis (e.g., scatter plots, box plots). Finally, k-nearest neighbor based classifiers are developed using these selected features to identify left and right hand imagery movements. A mean accuracy of 90.00% is achieved in publicly available BCI competition II Graz motor imagery data set which is shown to be better than some existing techniques.
机译:脑电图(EEG)信号对人脑电功能的解码是基于脑计算机接口(BCI)的系统中最重要的一步。因此,在本文中,提出了一种自动特征选择方法,以在对偶树复数小波变换域中根据脑电信号对图像的左手和右手运动进行分类。首先,将脑电信号分解为实,虚系数的几个频带,然后计算出一些统计特征,例如香农熵和方差。这些特征被组合到单个特征空间中,然后在选择最佳特征后自动从该组合特征空间中强加一些特征选择标准。通过统计假设检验(例如,单向方差分析)和图形分析(例如,散点图,箱形图),已表明所选特征有望区分不同类型的EEG信号。最后,使用这些选定特征开发了基于k近邻的分类器,以识别左手图像和右手图像运动。可公开获得的BCI竞赛II Graz运动图像数据集的平均准确度达到90.00%,这比某些现有技术要好。

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