一种改进的基于二阶Volterra滤波器的脑电信号消噪模型

Xia Wu, Yumei Zhang, Xiaojun Wu
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引用次数: 1

摘要

近年来,脑电图在脑疾病的生理研究和临床诊断中得到了广泛的应用。因此,如何消除噪声以获得纯净的脑电信号成为该领域的共同难题。Volterra作为一种典型的混沌时间序列分析方法,被广泛应用于脑电信号的研究。然而,沃尔泰拉系数的计算容易造成量纲灾难。此外,在真实环境中采集的脑电信号不容易提取先验信息,这与重构相空间的质量有关。为了克服这两个问题,引入均匀搜索粒子群优化算法(UPSO)对Volterra系数进行优化,进而构造基于UPSO二阶Volterra滤波器的噪声消除方法(UPSO- sovf)。该模型通过将相空间重构过程嵌入到模型求解过程中,从而动态地得到嵌入维数和延迟时间,从而提高了相空间重构的质量。本文对不同的脑电信号进行了实验,并与粒子群优化二阶Volterra滤波(PSO-SOVF)进行了比较。结果表明,与PSO-SOVF相比,该模型具有更好的避免量纲灾难的性能,能更好地反映脑电信号序列的规律。完全满足脑电信号去噪的要求。
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An Improved Noise Elimination Model of EEG Based on Second Order Volterra Filter
Recently, electroencephalogram (EEG) is widely applied for physiological research and clinical diagnosis of brain diseases. Therefore, how to eliminate noise to gain a pure EEG signal becomes a common difficulty in this field. As a typical method for chaotic time series, Volterra is widely used to study EEG signal. However, the calculation of Volterra coefficients is likely to cause dimensionality disaster. In addition, EEG signals collected in real environment are not easy to extract the prior information, which is related to the quality of the reconstructed phase space. In order to overcome these two problems, we introduce a uniform searching particle swarm optimization (UPSO) algorithm to optimize the coefficients of Volterra then a noise elimination method based on UPSO second order Volterra filter (UPSO-SOVF) can be constructed. The proposed model can improve the quality of phase-space reconstruction by implicating the phase space reconstruction process in the model solving process and then get the embedding dimension and delay time dynamically. In this paper, some experiments are made on different EEG signals and compared with the particle swarm optimization second order Volterra filter (PSO-SOVF). The result shows that the proposed model has a better performance in avoiding the dimensional disaster and can better reflect regularities of the EEG signal series than PSO-SOVF. It can fully meet the requirements for noise elimination of EEG signal.
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