Preliminary analysis of full-scale driving simulator data for unmasked sleepiness detection

J. H. Yang, Hong Joon Yoon, Woon-Sung Lee
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引用次数: 2

Abstract

A driver can mask his sleepiness. This study aims to determine effective and reliable indications of a driver's unmasked sleepiness using driver-vehicle data. A Bayesian approach and the signal detection theory were applied to investigate the effectiveness of selected driver-vehicle parameters for this purpose. Twenty subjects participated in three consecutive driving sessions on the simulated 4-lane highway from Seoul to Cheonan, Korea, during which their PERCLOS (percentage of eye closure) data, assumed to be a true indicator of a driver's unmasked sleepiness, i.e., drowsiness, were monitored. Correlations between PERCLOS and the selected vehicle parameters, such as velocity RMSE (root-mean-square error), were analyzed while participants performed skill-based and rule-based driving tasks. The preliminary experimental results demonstrated that unmasked sleepiness, as indicated by PERCLOS, was not correlated with the selected vehicle parameters for skill-based tasks. Some rule-based tasks, such as VPVT (Visual Psychomotor Vigilance Task), showed significant correlations with masked and unmasked sleepiness, which shows that driver-vehicle data can potentially be used as a dynamic unmasked sleepiness indicator. More in-depth analysis is being conducted and is expected to be included in the final version of the manuscript.
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全尺寸驾驶模拟器数据的初步分析
司机可以掩饰他的睡意。本研究旨在利用驾驶员-车辆数据确定驾驶员未被掩饰的困倦的有效和可靠的迹象。采用贝叶斯方法和信号检测理论对所选驾驶员-车辆参数的有效性进行了研究。20名受试者参加了从首尔到韩国天安的模拟四车道高速公路上连续三次的驾驶,在此期间,他们的PERCLOS(闭眼百分比)数据被认为是驾驶员未掩饰的困倦的真实指标,即困倦,被监测。在参与者执行基于技能和基于规则的驾驶任务时,研究人员分析了PERCLOS与选定车辆参数(如速度RMSE(均方根误差))之间的相关性。初步实验结果表明,PERCLOS显示的无掩饰困倦与基于技能的任务所选择的车辆参数无关。一些基于规则的任务,如VPVT(视觉精神运动警戒任务),显示出与隐藏和未隐藏困倦的显著相关性,这表明驾驶员-车辆数据可能被用作动态的未隐藏困倦指标。正在进行更深入的分析,预计将包括在手稿的最终版本中。
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