常见空间模式的典型相关方法

Eunho Noh, V. D. de Sa
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引用次数: 12

摘要

共同空间模式(CSPs)是一种对脑电信号进行空间滤波的方法,以提高两类间滤波方差/功率的可分辨性。本文提出的典型相关CSP方法(CCACSP)除了利用不同类别的协方差结构外,还利用时间序列中的时间信息来寻找使类别间带宽差最大化的滤波器。我们用模拟数据表明,在存在大量加性高斯噪声的情况下,无监督典型相关分析(CCA)算法比CSP算法能够更好地提取原始的类区别源(而CSP算法在非常低的噪声水平下表现更好),并且我们的CCACSP算法是一种混合算法,在所有噪声水平下都能产生良好的性能。最后,在BCI比赛数据上进行了实验,验证了CCACSP算法和CSP/CCACSP合并算法(mCCACSP)的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Canonical correlation approach to common spatial patterns
Common spatial patterns (CSPs) are a way of spatially filtering EEG signals to increase the discriminability between the filtered variance/power between the two classes. The proposed canonical correlation approach to CSP (CCACSP) utilizes temporal information in the time series, in addition to exploiting the covariance structure of the different classes, to find filters which maximize the bandpower difference between the classes. We show with simulated data, that the unsupervised canonical correlation analysis (CCA) algorithm is better able to extract the original class-discriminative sources than the CSP algorithm in the presence of large amounts of additive Gaussian noise (while the CSP algorithm is better at very low noise levels) and that our CCACSP algorithm is a hybrid, yielding good performance at all noise levels. Finally, experiments on data from the BCI competitions confirm the effectiveness of the CCACSP algorithm and a merged CSP/CCACSP algorithm (mCCACSP).
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