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Time-dependent frequency domain principal components analysis of multichannel non-stationary signals

机译:多通道非平稳信号的时变频域主成分分析

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High dimensional multi-channel signals often exhibit multi-collinearities. This suggests that such signals can be decomposed into uncorrelated principal components with possibly lower dimension than that of the original signal. A time-localized frequency domain principal components analysis method is proposed for signals that exhibit locally stationary behavior. The first step is to form a mean square consistent estimate of the time-varying spectrum matrix by smoothing the time-localized periodograms using a kernel defined on the frequency axis whose span is selected automatically using a generalized cross-validation procedure that is based on the asymptotic gamma distribution. The eigenvalues of the spectral density estimate are then computed which are the estimated spectra of the principal components. In addition, one may apply a formal statistical procedure for testing whether the weights (components of an eigenvector) at a particular channel change over time. The proposed method can be easily implemented because it only requires the fast Fourier transform (FFT) and eigenvalue–eigenvector decomposition routines. An illustration is presented using a multi-channel brain waves data set recorded during an epileptic seizure.
机译:高维多通道信号通常表现出多重共线性。这表明这样的信号可以分解为不相关的主成分,其维数可能比原始信号的维数低。针对具有局部平稳特性的信号,提出了一种时域频域主成分分析方法。第一步是通过使用频率轴上定义的核平滑时间局部化的周期图来形成时变频谱矩阵的均方一致性估计,该核的频度是使用基于广义交叉验证程序自动选择的跨度的渐近伽玛分布。然后计算光谱密度估计的特征值,它们是主分量的估计光谱。另外,可以应用一种正式的统计程序来测试特定信道上的权重(特征向量的分量)是否随时间变化。由于该方法仅需要快速傅立叶变换(FFT)和特征值-特征向量分解例程,因此可以轻松实现。使用在癫痫发作期间记录的多通道脑电波数据集提供了一个说明。

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