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Classification of EEG Signals Based on Filter Bank and Sparse Representation in Motor Imagery Brain-Computer Interfaces

机译:基于滤波器的eEG信号分类,电机图像脑 - 计算机接口中的稀疏表示

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摘要

To improve the classification performance of motor imagery (MI) based brain-computer interfaces (BCIs), a new signal processing algorithm for classifying electroencephalogram (EEG) signals by combining filter bank and sparse representation is proposed. The broadband EEG signals of 8-30 Hz are segmented into 10 sub-band signals using a filter bank. EEC! signals in each sub-band are spatially filtered by common spatial pattern (CSP). Fisher score combined with grid search is used for selecting the optimal sub-band, the band power of which is employed for designing a dictionary matrix. A testing signal can be sparsely represented as a linear combination of some columns of the dictionary. The sparse coefficients are estimated by l_1, norm optimization, and the residuals of sparse coefficients are exploited for classification. The proposed classification algorithm was applied to two BCI datasets and compared with two traditional broadband CSP-based algorithms. The results showed that the proposed algorithm provided superior classification accuracies, which were better than those yielded by traditional algorithms, verifying the efficacy of the present algorithm.
机译:为了提高基于电动机图像(MI)的大脑电脑接口(BCI)的分类性能,提出了一种通过组合滤波器组和稀疏表示来分类脑电图(EEG)信号的新信号处理算法。使用过滤器组将8-30Hz的宽带EEG信号分段为10个子带信号。欧洲经济共同体!每个子带中的信号通过公共空间模式(CSP)在空间上过滤。 Fisher分数与网格搜索组合用于选择最佳子带,其用于设计词典矩阵的频带功率。测试信号可以稀疏地表示为词典的某些列的线性组合。稀疏系数由L_1,规范优化估计,并且利用稀疏系数的残差进行分类。所提出的分类算法应用于两个BCI数据集,并与基于传统的宽带CSP的算法进行比较。结果表明,该算法提供了卓越的分类精度,比传统算法产生的算法更好,验证了本算法的功效。

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