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A New Approach for Brain Source Position Estimation Based on the Eigenvalues of the EEG Sensors Spatial Covariance Matrix

机译:基于EEG传感器空间协方差矩阵特征值的脑源位置估计的一种新方法

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Direction of Arrival (DOA) estimation methods, like MUSIC, can be applied to EEG signals for brain source localization. However, they show a severe degradation at small signal-to-noise ratios on the EEG sensors and for large amounts of brain sources. Inspired on the SEAD method, this article introduces a new method that analyses the eigenvalues of a modified spatial covariance matrix of the EEG signals to produce a two-dimensional spectrum whose peaks more robustly estimate the source positions on a horizontal section of the brain. The key approach is to select the eigenvalues that are less affected by the noise and use them to produce the spectrum. To assess the accuracy and robustness of the proposed method, we compared its root-mean-square-error performance at different noise conditions to those of MUSIC and NSF. The proposed method showed the lowest estimation errors for different amounts of brain sources and grid densities.
机译:抵达方向(DOA)估计方法,如音乐,可以应用于脑源定位的EEG信号。然而,它们在脑电图传感器上的小信噪比和大量的脑源上显示出严重的降解。这篇文章引发了一种新方法,介绍了一种新方法,该方法分析了EEG信号的修改空间协方差矩阵的特征值,以产生二维光谱,其峰值更加鲁棒地估计大脑水平部分上的源位置。关键方法是选择受噪声影响的特征值,并使用它们来产生频谱。为了评估所提出的方法的准确性和稳健性,我们将其根部平均方误差性能与音乐和NSF的不同噪声条件进行了比较。该方法显示了不同量的脑源和网格密度的最低估计误差。

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