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Classification of Motor Imagery BCI Using Multivariate Empirical Mode Decomposition

机译:基于多元经验模态分解的运动图像BCI分类

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Brain electrical activity recorded via electroencephalogram (EEG) is the most convenient means for brain–computer interface (BCI), and is notoriously noisy. The information of interest is located in well defined frequency bands, and a number of standard frequency estimation algorithms have been used for feature extraction. To deal with data nonstationarity, low signal-to-noise ratio, and closely spaced frequency bands of interest, we investigate the effectiveness of recently introduced multivariate extensions of empirical mode decomposition (MEMD) in motor imagery BCI. We show that direct multichannel processing via MEMD allows for enhanced localization of the frequency information in EEG, and, in particular, its noise-assisted mode of operation (NA-MEMD) provides a highly localized time-frequency representation. Comparative analysis with other state of the art methods on both synthetic benchmark examples and a well established BCI motor imagery dataset support the analysis.
机译:通过脑电图(EEG)记录的脑电活动是脑-计算机接口(BCI)的最方便的方法,并且非常吵闹。感兴趣的信息位于定义良好的频带中,并且许多标准频率估计算法已用于特征提取。为了处理数据的非平稳性,低信噪比和紧密分布的感兴趣的频带,我们研究了最近引入的经验模式分解(MEMD)多元扩展在运动图像BCI中的有效性。我们表明,通过MEMD进行的直接多通道处理允许在EEG中增强频率信息的本地化,尤其是其噪声辅助操作模式(NA-MEMD)提供了高度本地化的时频表示。在合成基准示例和完善的BCI运动图像数据集上与其他最新方法的比较分析均支持该分析。

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