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首页> 外文期刊>Journal of mechanics in medicine and biology >ONLINE REMOVAL OF EYE BLINK ARTIFACT FROM SCALP EEG USING CANONICAL CORRELATION ANALYSIS BASED METHOD
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ONLINE REMOVAL OF EYE BLINK ARTIFACT FROM SCALP EEG USING CANONICAL CORRELATION ANALYSIS BASED METHOD

机译:基于经典相关分析的从头皮脑电图去除眨眼伪影的方法

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摘要

Eye blink artifact, the main contamination in electroencephalography (EEG), brings serious problems for the analysis of EEG data. In this paper, an online method for eye blink artifact removal is presented. Canonical correlation analysis (CCA) is used to decompose the recorded signals containing several-channel EEG and one-channel vertical electrooculography (EOG). The identification of the artifactual component is fully automatically implemented based on evaluating the similarity between the reference EOG and decomposed CCA components. This method was compared with an independent component analysis based technique on a synthetic data set and achieved comparable performance for removing eye blink artifact. Moreover, the CCA based method is less time-consuming. The proposed method was finally implemented with Labview for removing eye blink artifact in online test. The online experiment results show that the proposed method could fulfill the identification and suppression of eye blink artifact from contaminated EEG in real-time.
机译:眨眼伪像是脑电图(EEG)的主要污染,给脑电图数据的分析带来了严重的问题。本文提出了一种在线方法,用于消除眨眼伪影。典型相关分析(CCA)用于分解包含多通道EEG和一通道垂直眼电图(EOG)的记录信号。基于评估参考EOG与分解后的CCA组件之间的相似性,可以完全自动实现人为成分的标识。将该方法与基于综合数据集的基于独立成分分析的技术进行了比较,在去除眨眼伪影方面达到了可比的性能。此外,基于CCA的方法耗时较少。最后用Labview实现了该方法,以消除在线测试中的眨眼伪像。在线实验结果表明,该方法可以实时实现对污染的脑电图眨眼伪像的识别和抑制。

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