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Artifacts and noise removal for electroencephalogram (EEG): A literature review

机译:脑电图(EEG)的伪像和噪声消除:文献综述

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Electroencephalogram (EEG) is a signal collected from the human brain to study and analyze the brain activities. However, raw EEG may be contaminated with unwanted components such as noises and artifacts caused by power source, environment, eye blinks, heart rate and muscle movements, which are unavoidable. These unwanted components will effect the analysis of EEG and provide inaccurate information. Therefore, researchers have proposed all kind of approaches to eliminate unwanted noises and artifacts from EEG. In this paper, a literature review is carried out to study the works that have been done for noise and artifact removal from year 2010 up to the present. It is found that conventional approaches include ICA, wavelet based analysis, statistical analysis and others. However, the existing ways of artifacts removal cannot eliminate certain noise and will cause information lost by directly discard the contaminated components. From the study, it is shown that combination of conventional with other methods is popularly used, as it is able to improve the removal of artifacts. The current trend of artifacts removal makes use of machine learning to provide an automated solution with higher efficiency.
机译:脑电图(EEG)是从人脑收集的信号,用于研究和分析大脑活动。但是,原始的EEG可能会被有害成分污染,例如电源,环境,眨眼,心率和肌肉运动等不可避免的噪声和伪影。这些有害成分将影响脑电图的分析并提供不准确的信息。因此,研究人员提出了各种方法来消除来自EEG的有害噪声和伪影。在本文中,进行了文献综述,以研究从2010年至今的噪声和伪影去除工作。发现传统方法包括ICA,基于小波的分析,统计分析等。但是,现有的去除伪影的方法无法消除某些噪音,并且会通过直接丢弃受污染的组件而导致信息丢失。从研究中可以看出,传统方法与其他方法的结合被广泛使用,因为它能够改善伪影的去除。当前消除伪影的趋势是利用机器学习来提供效率更高的自动化解决方案。

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