Artifact Removal Methods in EEG Recordings: A Review

Mariyadasu Mathe, Padmaja Mididoddi, B. T. Krishna
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引用次数: 3

Abstract

To obtain the correct analysis of electroencephalogram (EEG) signals, non-physiological and physiological artifacts should be removed from EEG signals. This study aims to give an overview on the existing methodology for removing physiological artifacts, e.g., ocular, cardiac, and muscle artifacts. The datasets, simulation platforms, and performance measures of artifact removal methods in previous related research are summarized. The advantages and disadvantages of each technique are discussed, including regression method, filtering method, blind source separation (BSS), wavelet transform (WT), empirical mode decomposition (EMD), singular spectrum analysis (SSA), and independent vector analysis (IVA). Also, the applications of hybrid approaches are presented, including discrete wavelet transform - adaptive filtering method (DWT-AFM), DWT-BSS, EMD-BSS, singular spectrum analysis - adaptive noise canceler (SSA-ANC), SSA-BSS, and EMD-IVA. Finally, a comparative analysis for these existing methods is provided based on their performance and merits. The result shows that hybrid methods can remove the artifacts more effectively than individual methods.
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脑电图记录中的伪影去除方法综述
为了获得对脑电图信号的正确分析,应该从脑电图信号中去除非生理和生理伪影。本研究旨在概述现有的去除生理伪影的方法,如眼部、心脏和肌肉伪影。总结了以往相关研究中伪影去除方法的数据集、仿真平台和性能指标。讨论了每种技术的优缺点,包括回归方法、滤波方法、盲源分离(BSS)、小波变换(WT)、经验模式分解(EMD)、奇异谱分析(SSA)和独立向量分析(IVA)。此外,还介绍了混合方法的应用,包括离散小波变换-自适应滤波方法(DWT-AFM)、DWT-BSS、EMD-BSS、奇异谱分析-自适应噪声消除器(SSA-ANC)、SSA-BSS和EMD-IVA。最后,根据这些现有方法的性能和优点,对其进行了比较分析。结果表明,混合方法可以比单独方法更有效地去除伪影。
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
12
审稿时长
18 weeks
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