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Automatic Eye-Blink Artifact Removal Method Based on EMD-CCA

机译:基于EMD-CCA的自动眨眼伪影拆除方法

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摘要

This research proposes a new hybrid algorithm for automatic removal of eye blink artifact from EEG data based on empirical mode decomposition (EMD) and canonical correlation analysis (CCA). The validity and efficiency of the proposed algorithm is evaluated using correlation coefficient and signal-to-artifact ratio (SAR) and the proposed algorithm is also compared with other popular eye blink artifact removal techniques (CCA, ICA, EMD-ICA) on simulated EEG data of two channels. From the simulation results, the average correlation coefficients for the EEG channels are obtained as 0.908 and 0.864 respectively. The SAR of the EEG signal also improved from 2.2 dB to 6.0 dB after correction using our proposed method. Compared to other eye blink artifact removal techniques, our proposed method has two benefits. Firstly, no visual inspection is required to detect the eye blink artifact components. Secondly, computational assessment of corrected EEG waveforms reveals that the proposed algorithm retrieves the EEG data by removing the eye blink artifacts reliably.
机译:本研究提出了一种新的混合算法,用于根据经验模式分解(EMD)和规范相关分析(CCA)从EEG数据自动去除眼睛闪烁伪影。使用相关系数和信号到伪影比(SAR)评估所提出的算法的有效性和效率,并且还将所提出的算法与模拟脑电图的其他流行眨眼伪像去除技术(CCA,ICA,EMD-ICA)进行比较两个频道的数据。从仿真结果中,EEG通道的平均相关系数分别为0.908和0.864获得。使用我们所提出的方法校正后,EEG信号的SAR还从2.2 dB提高到6.0 dB。与其他眼睛眨眼伪像去除技术相比,我们所提出的方法有两个好处。首先,不需要目视检查来检测眼睛眨眼伪像组分。其次,校正EEG波形的计算评估揭示了所提出的算法通过可靠地删除眼睛闪烁伪像来检索脑电图数据。

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