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Generalized optimal spatial filtering using a kernel approach with application to EEG classification

机译:使用核方法的广义最优空间滤波及其在脑电分类中的应用

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摘要

Common spatial patterns (CSP) has been widely used for finding the linear spatial filters which are able to extract the discriminative brain activities between two different mental tasks. However, the CSP is difficult to capture the nonlinearly clustered structure from the non-stationary EEG signals. To relax the presumption of strictly linear patterns in the CSP, in this paper, a generalized CSP (GCSP) based on generalized singular value decomposition (GSVD) and kernel method is proposed. Our method is able to find the nonlinear spatial filters which are formulated in the feature space defined by a nonlinear mapping through kernel functions. Furthermore, in order to overcome the overfitting problem, the regularized GCSP is developed by adding the regularized parameters. The experimental results demonstrate that our method is an effective nonlinear spatial filtering method.
机译:常见的空间模式(CSP)已被广泛用于查找线性空间过滤器,这些过滤器能够提取两个不同的心理任务之间的区别性大脑活动。但是,CSP难以从非平稳EEG信号中捕获非线性聚类结构。为了放松CSP中严格线性模式的假设,提出了一种基于广义奇异值分解(GSVD)和核方法的广义CSP(GCSP)。我们的方法能够找到非线性空间滤波器,这些滤波器是通过核函数通过非线性映射定义的特征空间中制定的。此外,为了克服过拟合问题,通过添加正则化参数来开发正则化GCSP。实验结果表明,该方法是一种有效的非线性空间滤波方法。

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