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Analysis of Non-stationary Electroencephalogram Using the Wavelet Transformation

机译:基于小波变换的非平稳脑电图分析

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Wavelet packet analysis is employed in this paper to investigate the transient characteristics of the practical electroencephalogram (EEG) signals. Since the non-stationary nature of different kinds of clinical EEG rhythms covers different frequency bands, wavelet packet decomposition, as a time-varying filter, can be used for forming the filters with different frequency response characteristics to detect 4 different EEG rhythms. We also select he coefficients of wavelet transformation corresponding to the desired rhythms bands to construct the transient brain topographic mapping 'with multi-channel signals. Several clinical EEG signals are decomposed into 4 kinds of rhythms, and the specified rhythms are investigated and compared so that we can further understand the dynamic rhythms of the EEG signals in different functional states of brain. It is indicated from the experimental results that the transient rhythms and the dynamic information of the brain electrical activities can be well described by using wavelet packet analysis. The method presented in this paper also proposes a new way for the analysis of other pathological EEG signals, such as the signals containing the spikes and slow waves.
机译:本文采用小波包分析来研究实际脑电图(EEG)信号的瞬态特性。由于不同类型的脑电图节律的非平稳性质涵盖不同的频带,因此小波包分解作为随时间变化的滤波器,可用于形成具有不同频率响应特性的滤波器,以检测4种不同的脑电图节律。我们还选择与所需节奏带相对应的小波变换系数,以构造具有多通道信号的瞬态大脑地形图。将几种临床脑电信号分解为4种节律,并对特定节律进行研究和比较,以便我们可以进一步了解脑电信号在不同功能状态下的动态节律。实验结果表明,利用小波包分析可以很好地描述脑电活动的瞬时节律和动态信息。本文提出的方法还为分析其他病理性EEG信号(例如包含尖峰和慢波的信号)提出了一种新方法。

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