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On-board Drowsiness Detection using EEG: Current Status and Future Prospects

机译:使用EEG进行车载嗜睡检测:现状和未来展望

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Drowsiness is a transition of psychophysiological state from alert towards sleep causing degradation in concentration, thereby increasing the response time. Drowsy driving is one of the leading causes of accidents in transportation sector. An on-board warning system which helps drivers with essential feedback about the onset of drowsiness by continuously monitoring divers’ psychophysiological state can help to reduce the drowsy driving related accidents. Physiological signals are found to be most effective for continuous monitoring and better detection of drowsiness. Among all the frequently used physiological signals, Electroencephalogram (EEG), a record of the electrical activities of the brain, showed the strongest relation with drowsiness. Hence, EEG is widely considered as a reliable measure for drowsiness, fatigue, and performance evaluation. In this paper, EEG analysis for drowsiness studies, current findings and future directions of this field are briefly reviewed. Power spectral density (PSD) based features are found to be the most commonly used features for EEG based drowsiness studies. EEG low-frequency bands (delta, theta, and alpha), especially alpha band, shows an increase in band power during the drowsy state compared to alert state. In contrast, high-frequency bands (beta and gamma), specifically beta band shows a decrease in band power during drowsiness. In terms of brain regions, frontal, parietal, and occipital are suggestively informative, especially, alpha from occipital and beta from frontal are two potential indicators. Therefore, identifying informative brain regions with specific frequency bands will help to reduce the number of electrodes required to develop an effective EEG based drowsiness detection and warning system.
机译:嗜睡是从警报到睡眠的心理生理状态过渡,导致浓度降解,从而增加了响应时间。昏昏欲睡的驾驶是交通部门事故的主要原因之一。一辆车载警告系统,通过不断监测潜水员的心理生理国家可以帮助减少驾驶相关事故的令人讨厌的令人反馈的驾驶员。发现生理信号对于连续监测和更好地检测嗜睡最有效。在所有经常使用的生理信号中,脑电图(EEG),大脑电气活动的记录,表现出与嗜睡的最强烈关系。因此,EEG被广泛认为是嗜睡,疲劳和性能评估的可靠措施。本文简要综述了该领域的嗜睡研究,目前调查结果和未来方向的脑电图分析。基于功率谱密度(PSD)的特征被发现是基于EEG的嗜睡研究最常用的特征。与警报状态相比,EEG低频带(Δ,θ和alpha),尤其是alpha频带,显示昏昏欲睡状态期间的频带电量增加。相反,高频带(Beta和伽马),特别是β频带在困倦期间显示了带电力的减小。就脑区,正面,前景和枕骨而言,暗示地提供信息,尤其是来自Frontal的枕骨和β的α是两个潜在指标。因此,识别具有特定频带的信息性大脑区域将有助于减少基于止血性检测和警告系统的有效EEG所需的电极数。

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