基于ICA和提升小波变换的脑电信号伪影自动去除

S. Jirayucharoensak, P. Israsena
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引用次数: 19

摘要

脑电信号伪影显著影响脑机接口(BCI)系统特征提取和数据分类的准确性。由于受试者的身体状况,眼部和肌肉活动产生的脑电图伪影是不可避免和不可预测的。因此,移除这些工件是BCI应用程序使系统更加健壮的关键功能。独立分量分析(ICA)是去除脑电信号伪影最重要的技术之一。该方法将脑电信号分离成多个独立分量(Independent Components, ic),然后从神经生成的脑信号中区分出脑电信号伪影。但是,ICA算法的源分离存在一定的缺陷。通常,被识别为工件的IC包括对数据分类有用的脑电波活动。该方法利用提升小波变换(LWT)从伪信号中提取有用的神经信号。实验结果证明了该算法去除弱、强眨眼伪影的性能和准确性。在曼谷朱拉隆功医院对10名健康受试者和5名轻度认知障碍患者进行了试验前测试,并在NECTEC的注意力训练神经反馈系统中实施了这种移除技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic removal of EEG artifacts using ICA and Lifting Wavelet Transform
EEG artifacts significantly affect the accuracy of feature extraction and data classification of Brain-computer interface (BCI) systems. The EEG artifacts derived from ocular and muscular activities are inevitable and unpredictable due to subject's physical conditions. Consequently, the removal of these artifacts is a crucial function for BCI applications to make the system more robust. One of the most prominent techniques employed to remove the EEG artifacts is Independent Component Analysis (ICA). This technique separates EEG signals into Independent Components (ICs) and then discriminates EEG artifacts from neurally generated brain signals. However, the source separation of ICA algorithm is imperfect. Frequently, the IC identified to be an artifact includes brain wave activities useful for data classification. The proposed method will elaborate on the IC with Lifting Wavelet Transform (LWT) to extract the useful neural signals from the artifact component. Experimental results prove the performance and accuracy of the proposed removal algorithm of light and strong eye-blink artifacts. This removal technique implemented in NECTEC's Neurofeedback System for Attention Training was tested in pre-trial sessions with 10 healthy subjects and 5 MCI patients at Chulalongkorn Hospital, Bangkok.
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