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Wavelet-based analysis of spectral rearrangements of EEG patterns and of non-stationary correlations

机译:基于小波的脑电图谱和非平稳相关光谱重排分析

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摘要

In this paper we present a novel technique of studying EEG signals taking into account their essential nonstationarity. The bursts of activity in EEG rhythm are modeled as a superposition of specially designed elementary signals against the background of a real EEG record at rest. To calculate the time variation of quantitative characteristics of EEG patterns we propose the algorithm based on continuous wavelet transform (CWT) followed by the analysis of spectral integral dynamics in a given frequency range. We introduce new quantitative parameters to describe the dynamics of spectral properties both for each burst of brain activity and for their ensemble. Based on the given model we have identified the appearance and disappearance of patterns in EEG rhythm. The problem of non-stationary correlation of different EEG channels is solved. The use of the techniques for analyzing and classifying transient processes related to the activity of human central nervous system is also discussed. (C) 2014 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种新的技术来研究脑电信号,考虑到其基本的非平稳性。脑电节律的活动爆发被建模为在静止的真实脑电图记录的背景下经过特殊设计的基本信号的叠加。为了计算脑电图模式量化特征的时间变化,我们提出了基于连续小波变换(CWT)的算法,然后分析了给定频率范围内的频谱积分动力学。我们引入了新的定量参数,以描述每次大脑活动爆发及其集合的频谱特性的动力学。根据给定的模型,我们确定了脑电节律中模式的出现和消失。解决了不同脑电通道的非平稳相关问题。还讨论了使用该技术来分析和分类与人类中枢神经系统活动相关的瞬时过程。 (C)2014 Elsevier B.V.保留所有权利。

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