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An efficient hybrid linear and kernel CSP approach for EEG feature extraction

机译:一种有效的线性和核CSP混合方法进行脑电特征提取

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摘要

Common spatial patterns (CSP) has proved to be very successful in EEG feature extraction. To relax the presumption of strictly linear patterns in the CSP, nonlinear variants of the approach are proposed using the kernel method. However, they typically suffer from two main drawbacks: the problem of complexity and low generalization ability dealing with different subjects. To overcome these drawbacks, in this paper, two effective solutions are proposed. First, data bunching in the low-dimensional space is used to solve the complexity problem. The second problem is tackled by choosing appropriate kernel functions, which take into account very small amounts of nonlinearity in a generally linear context of the brain spatial patterns, and also are able to be adapted to fit each certain case.
机译:事实证明,通用空间模式(CSP)在脑电特征提取中非常成功。为了放松CSP中严格线性模式的假设,使用核方法提出了该方法的非线性变体。然而,它们通常遭受两个主要缺点:复杂性问题和处理不同主题的泛化能力低。为了克服这些缺点,本文提出了两种有效的解决方案。首先,使用低维空间中的数据聚类来解决复杂性问题。第二个问题是通过选择适当的核函数来解决的,该核函数考虑了大脑空间模式的一般线性情况下的极少量非线性,并且还能够适应每种情况。

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