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COHERENCE ESTIMATION BETWEEN EEG SIGNALS USING MULTIPLE WINDOWTIME-FREQUENCY ANALYSIS COMPARED TO GAUSSIAN KERNELS

机译:与高斯核相比,使用多个窗口时频分析进行脑电信号之间的相干估计

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It is believed that neural activity evoked by cognitive tasks is spatially correlated in certain frequency bands. The electroencephalogram (EEG) is highly affected by noise of large amplitude which calls for sophisticated time local coherence estimation methods. In this paper we investigate different approaches to estimate time local coherence between two real valued signals. Our results indicate that the method using two dimensional Gaussian kernels has a slightly better average SNR compared to the multiple window approach. On the other hand, the multiple window approach has a more narrow SNR distribution and seems to perform better in the worst case.
机译:据认为,认知任务引起的神经活动在某些频带中在空间上相关。脑电图(EEG)受大幅度噪声的强烈影响,这需要复杂的时间局部相干估计方法。在本文中,我们研究了不同的方法来估计两个实值信号之间的时间局部相干性。我们的结果表明,与多窗口方法相比,使用二维高斯核的方法具有更好的平均SNR。另一方面,多窗口方法的SNR分布更窄,在最坏的情况下似乎表现更好。

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