首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >Comparison of power spectrum predictors in computing coherence functions for intracortical EEG signals.
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Comparison of power spectrum predictors in computing coherence functions for intracortical EEG signals.

机译:计算皮质脑电信号相干函数中功率谱预测值的比较。

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The present study compares two Auto-Regressive (AR) model based (Burg Method (BM) and Yule Walker Method) and two subspace based (Eigen Method and Multiple Signal Classification Method) power spectral density predictors in computing the Coherence Function (CF) to observe EEG synchronization between right and left hemispheres. For this purpose, two channels intracortical EEG series recorded from WAG/Rij rats (a genetic model for human absence epilepsy) are analyzed. In tests, AR model-based predictors result the close performance such that the CF estimations are sensitive to the AR model order. Dealing with the subspace-based predictors; certain peaks in CF estimations can also be detected in case of low noise subspace dimension. Besides, they are more computational complexity. In conclusion, high order BM is proposed in EEG synchronization. The results support that each EEG sequence probably meets a high order AR model where the dimension of the related noise subspace is relatively low in comparison tothe model order.
机译:本研究在计算相干函数(CF)时比较了两个基于自回归(AR)模型(Burg方法(BM)和Yule Walker方法)和两个基于子空间(本征方法和多信号分类方法)功率谱密度预测值。观察左右半球的脑电图同步。为此,分析了从WAG / Rij大鼠(人类失神癫痫的遗传模型)记录的两个通道的皮质内EEG系列。在测试中,基于AR模型的预测变量会产生接近的性能,以使CF估算值对AR模型的阶数敏感。处理基于子空间的预测器;在低噪声子空间维的情况下,也可以检测到CF估计中的某些峰值。此外,它们具有更高的计算复杂度。总之,在脑电同步中提出了高阶BM。结果支持每个EEG序列可能满足高阶AR模型,其中相关噪声子空间的维数与模型阶次相比相对较低。

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