一种基于PCA和DEBSS算法的多通道脑电信号快速去噪方法

Dong-Ho Kang, Luo Zhi-zeng
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引用次数: 30

摘要

提出了一种将主成分分析(PCA)与密度估计盲源分离(DEBSS)相结合的多路脑电信号去噪方法。在小波分析中去除高频噪声的基础上,采用主成分分析算法对脑电信号进行降维处理。然后,采用DEBSS算法对数据降维后的脑电信号进行分离。利用互相关系数和相关非线性参数对独立分量进行分析,识别并去除主要干扰。最后对剩余的独立分量进行重构,得到无主干扰的脑电信号。实验结果表明,该方法能够快速有效地消除多通道脑电信号的主干扰,同时具有较强的可扩展性和稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method of Denoising Multi-channel EEG Signals Fast Based on PCA and DEBSS Algorithm
A method of de-noising multi-channel EEG signals which combines the principle component analysis (PCA) with density estimation blind source separation (DEBSS) is proposed in this paper. Based on removing high frequency noise in wavelet analysis, the PCA algorithm is used to process the EEG signals to reduce the data dimension. Then, the DEBSS algorithm is adapted to separate the EEG signals which data dimension has been reduced. The main interference is identified and removed by using cross-correlation coefficient and related non-linear parameters to analyze the independent components. Finally, through reconstructing the remaining independent components, the EEG signals without main interference will be obtained. The experimental results show that this method can eliminate the main interference of multi-channel EEG signals rapidly and effectively, meanwhile, it is stable and has strong scalability.
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