Toward Applicable EEG-Based Drowsiness Detection Systems: A Review

Q3 Health Professions
Nasrin Sheibani Asl, G. Baghdadi, Serajeddin Ebrahimian, S. J. Haghighi
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引用次数: 1

Abstract

Purpose: Drowsy driving accounts for many accidents and has attracted substantial research attention in recent years. Electroencephalography (EEG) signals are shown to be a reliable measure for the early detection of drowsiness. Unfortunately, there is no comprehensive study showing the applicability of drowsiness detection systems with EEG signals. In this research, we targeted the studies under the category of drowsiness detection, which adopted an EEG-based approach, to inspect the applicability of these systems from different aspects. Materials and Methods: We included documented studies that utilized clinical devices and consumer-grade EEG headsets for detection of drowsiness and investigated the selected studies from different aspects such as the number of EEG channels, sampling frequency, extracted features, type of classifiers, and accuracy of detection. Among available headsets, we focused on the most popular ones, namely Muse, NeuroSky, and EMOTIV brands. Results: Considerable number of studies have used EEG headsets, and their reports showed that the highest average accuracy belongs to EMOTIV, and the highest maximum detection accuracy, 98.8%, was achieved by the Muse headset. Spectral features extracted from short periods of 1, 2, or 10 secs are the most popular features, and the support vector machine is the most commonly used classifier in drowsiness detection systems. Therefore, implementing a reliable detection system does not necessarily include complicated features and classifiers. Conclusion: It is shown that, despite their few electrodes, commercial headsets have gained decent detection accuracy. This study sheds light on the current status of drowsiness detection systems and paves the way for future industrial designs of such systems.
面向适用的基于脑电图的困倦检测系统:综述
目的:疲劳驾驶是许多交通事故的原因之一,近年来引起了大量的研究关注。脑电图(EEG)信号被证明是早期发现困倦的可靠措施。不幸的是,目前还没有全面的研究表明用脑电图信号检测困倦系统的适用性。在本研究中,我们针对睡意检测类别下的研究,采用基于脑电图的方法,从不同的角度考察这些系统的适用性。材料和方法:我们纳入了使用临床设备和消费级脑电图耳机检测困倦的文献研究,并从脑电图通道数量、采样频率、提取特征、分类器类型和检测准确性等不同方面对所选研究进行了调查。在现有的耳机中,我们专注于最受欢迎的耳机,即Muse, NeuroSky和EMOTIV品牌。结果:相当多的研究使用了EEG耳机,他们的报告显示EMOTIV的平均准确率最高,Muse耳机的最大检测准确率最高,达到98.8%。从1秒、2秒或10秒的短周期中提取的光谱特征是最常用的特征,支持向量机是困倦检测系统中最常用的分类器。因此,实现一个可靠的检测系统并不一定包括复杂的特征和分类器。结论:尽管他们的电极很少,商业耳机已经获得了不错的检测精度。这项研究揭示了困倦检测系统的现状,为未来此类系统的工业设计铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Frontiers in Biomedical Technologies
Frontiers in Biomedical Technologies Health Professions-Medical Laboratory Technology
CiteScore
0.80
自引率
0.00%
发文量
34
审稿时长
12 weeks
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