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A Removal of Eye Movement and Blink Artifacts from EEG Data Using Morphological Component Analysis

机译:使用形态成分分析从EEG数据中去除眼球运动和眨眼伪像

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摘要

EEG signals contain a large amount of ocular artifacts with different time-frequency properties mixing together in EEGs of interest. The artifact removal has been substantially dealt with by existing decomposition methods known as PCA and ICA based on the orthogonality of signal vectors or statistical independence of signal components. We focused on the signal morphology and proposed a systematic decomposition method to identify the type of signal components on the basis of sparsity in the time-frequency domain based on Morphological Component Analysis (MCA), which provides a way of reconstruction that guarantees accuracy in reconstruction by using multiple bases in accordance with the concept of “dictionary.” MCA was applied to decompose the real EEG signal and clarified the best combination of dictionaries for this purpose. In our proposed semirealistic biological signal analysis with iEEGs recorded from the brain intracranially, those signals were successfully decomposed into original types by a linear expansion of waveforms, such as redundant transforms: UDWT, DCT, LDCT, DST, and DIRAC. Our result demonstrated that the most suitable combination for EEG data analysis was UDWT, DST, and DIRAC to represent the baseline envelope, multifrequency wave-forms, and spiking activities individually as representative types of EEG morphologies.
机译:EEG信号包含大量的眼部伪影,这些眼部伪影具有不同的时频特性,在感兴趣的EEG中混合在一起。基于信号矢量的正交性或信号分量的统计独立性,通过现有的称为PCA和ICA的分解方法已基本解决了伪影去除问题。我们以信号形态学为重点,提出了一种基于形态成分分析(MCA)的基于时频稀疏性识别信号成分类型的系统分解方法,为保证重构的准确性提供了一种方法。通过根据“词典”的概念使用多个基础。 MCA被用来分解真实的EEG信号,并为此目的阐明了词典的最佳组合。在我们提出的使用颅内记录的iEEG的半现实生物信号分析中,这些信号通过波形的线性扩展成功地分解为原始类型,例如冗余变换:UDWT,DCT,LDCT,DST和DIRAC。我们的结果表明,最适合EEG数据分析的组合是UDWT,DST和DIRAC,它们分别代表基线包络,多频波形和峰值活动作为EEG形态的代表类型。

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