Izzat Aulia Akbar, T. Igasaki, N. Murayama, Zhencheng Hu
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引用次数: 5
摘要
交通事故是许多国家面临的最重要的问题之一。交通事故的原因之一是嗜睡。为了解决这个问题已经做了很多研究。其中之一是捕捉司机的面部表情,估计司机的困倦程度。此外,测量驾驶员的生理状况,并利用它来预测一个人的困倦也被考虑。由于嗜睡与大脑密切相关,利用生物信号尤其是大脑信号来评估嗜睡成为最有希望评估嗜睡的方法。在驾驶模拟器环境下,采用脑电图(EEG)信号和日本版Karolinska嗜睡量表(KSS-J)研究嗜睡与生理状态的关系。结果表明:与清醒状态(KSS-J < 7)相比,困倦状态(KSS-J≥7)枕叶脑电信号α频带功率显著增加;7) P <;0.001. 因此,在驾驶模拟器环境下,脑电图可以有效地发现驾驶员的困倦状态。
Drowsiness assessment using electroencephalogram in driving simulator environment
Traffic accident is one of the most important problems in many countries. One of traffic accident causes is drowsiness. Many studies have been done to solve this problem. One of them is to capture the driver's face expression and estimate the driver's drowsiness. Besides measuring the driver's physiological condition and use it to predict one's drowsiness is also considered. Since drowsiness is strongly related to human brain, by assessing drowsiness using biological signal especially brain signal become the most promising approach to evaluate drowsiness. We proposed a study to investigate the relationship between drowsiness and physiological condition by employing electroencephalogram (EEG) signal and Japanese version of Karolinska sleepiness scale (KSS-J) in driving simulator environment. The result showed alpha band power of EEG signal from occipital lobe in drowsy condition (KSS-J ≥ 7) increased significantly compared with that in alert condition (KSS-J <; 7) with P <; 0.001. Therefore, it is suggested that EEG is effective to find the drowsiness in driving simulator environment.