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Classifying Single-Trial EEG During Motor Imagery Using a Multivariate Mutual Information Based Phase Synchrony Measure

机译:在电动机图像期间使用基于多变量的相互信息的相同步测量来分类单试eeg

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In electroencephalography(EEG)-based brain computer interfaces (BCIs), interactions between different areas of the user's brain can be measured using a phase synchronization measure. In this paper, a mutual information-based multivariate phase synchrony measure is used to assess local-scale connectivity and classify EEG to BCI control condition. The results obtained using a well-known database shows that the method proposed in this paper significantly outperforms the existing technique when used for classifying right and left hand movement motor imageries of 5 different subjects using their recorded EEG signals. Specifically, the mean accuracy of the proposed method is 70% higher than that of the existing techniques based on synchrony measures. Also, statistical test shows that the channels on the right hemisphere (left hemisphere) are more synchronized during left (right) hand movement motor imagery.
机译:在基于脑电图(EEG)的大脑计算机接口(BCI)中,可以使用相位同步测量来测量用户大脑的不同区域之间的相互作用。在本文中,使用了一种基于互动的多变量相同步测量来评估本地尺度连接并将EEG分类为BCI控制条件。使用众所周知的数据库获得的结果表明,当使用其录制的EEG信号进行分类,本文提出的方法显着优于现有技术。具体地,所提出的方法的平均精度比基于同步措施的现有技术高70±%。此外,统计测试表明,右半球(左半球)上的通道在左(右)手动电动机图像中更像更同步。

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