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基于启发式优化阈值的小波变换从 EEG 信号中自动去除眨眼伪迹。

Automatic Eyeblink Artifact Removal From EEG Signal Using Wavelet Transform With Heuristically Optimized Threshold.

出版信息

IEEE J Biomed Health Inform. 2021 Feb;25(2):475-484. doi: 10.1109/JBHI.2020.2995235. Epub 2021 Feb 5.

DOI:10.1109/JBHI.2020.2995235
PMID:32750902
Abstract

This paper proposes an automatic eyeblink artifacts removal method from corrupted-EEG signals using discrete wavelet transform (DWT) and meta-heuristically optimized threshold. The novel idea of thresholding approximation-coefficients (ACs) instead of detail-coefficients (DCs) of DWT of EEG in a backward manner is proposed for the first time for the removal of eyeblink artifacts. EEG is very sensitive and easily gets affected by eyeblink artifacts. First, the eyeblink corrupted EEG signals are identified using support vector machine (SVM) as a classifier. Then the corrupted EEG signal is decomposed using DWT up to the sixth level. Both the mother wavelet and the level of decomposition are selected using appropriate techniques. Then the ACs are thresholded in backward manner using the optimum threshold values followed by inverse DWT operation to reconstruct the original EEG signal. The AC at level 6 is thresholded and is used in IDWT with DC to get back the AC at level 5. Likewise, the backward thresholding of the ACs followed by IDWT is continued till the artifact free EEG signal is reconstructed at level 1. The optimum values of the thresholds of the ACs at different levels are optimized using two meta-heuristic algorithms, particle swarm optimization (PSO) and grey wolf optimization (GWO) for comparison. The results reveal that the proposed methodology is superior to the recently reported methods in terms of average correlation coefficient (CC) which states that the proposed method is better in terms of the quality of reconstruction in addition to being fully automatic.

摘要

本文提出了一种使用离散小波变换(DWT)和元启发式优化阈值自动去除 corrupted-EEG 信号中的眨眼伪影的方法。该方法首次提出了使用 DWT 的反向阈值逼近系数(AC)而不是细节系数(DC)来去除眨眼伪影的新颖想法。脑电图非常敏感,容易受到眨眼伪影的影响。首先,使用支持向量机(SVM)作为分类器识别眨眼伪影的 corrupted-EEG 信号。然后,使用 DWT 将 corrupted-EEG 信号分解到第六级。母小波和分解的级别都是使用适当的技术选择的。然后,使用最佳阈值在反向方向上对 AC 进行阈值处理,然后进行逆 DWT 操作以重建原始 EEG 信号。使用最佳阈值对第 6 级的 AC 进行阈值处理,并将其与 DC 一起用于 IDWT 以获取第 5 级的 AC。同样,继续对 AC 进行反向阈值处理,并进行 IDWT,直到在第 1 级重建出无伪影的 EEG 信号。使用两种元启发式算法,粒子群优化(PSO)和灰狼优化(GWO)优化不同级别 AC 的最佳阈值值以进行比较。结果表明,与最近报道的方法相比,该方法在平均相关系数(CC)方面具有优越性,这表明该方法在重建质量方面更好,并且完全是自动的。

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