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Identifying the Causes of Drivers’ Hazardous States Using Driver Characteristics Vehicle Kinematics and Physiological Measurements

机译:使用驾驶员特征车辆运动学和生理学测量来识别驾驶员危险状态的原因

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摘要

Drivers’ hazardous physical and mental states (e.g., distraction, fatigue, stress, and high workload) have a major effect on driving performance and strongly contribute to 25–50% of all traffic accidents. They are caused by numerous factors, such as cell phone use or lack of sleep. However, while significant research has been done on detecting hazardous states, most studies have not tried to identify the causes of the hazardous states. Such information would be very useful, as it would allow intelligent vehicles to better respond to a detected hazardous state. Thus, this study examined whether the cause of a driver’s hazardous state can be automatically identified using a combination of driver characteristics, vehicle kinematics, and physiological measures. Twenty-one healthy participants took part in four 45-min sessions of simulated driving, of which they were mildly sleep-deprived for two sessions. Within each session, there were eight different scenarios with different weather (sunny or snowy), traffic density and cell phone usage (with or without cell phone). During each scenario, four physiological (respiration, electrocardiogram, skin conductance, and body temperature) and eight vehicle kinematics measures were monitored. Additionally, three self-reported driver characteristics were obtained: personality, stress level, and mood. Three feature sets were formed based on driver characteristics, vehicle kinematics, and physiological signals. All possible combinations of the three feature sets were used to classify sleep deprivation (drowsy vs. alert), traffic density (low vs. high), cell phone use, and weather conditions (foggy/snowy vs. sunny) with highest accuracies of 98.8%, 91.4%, 82.3%, and 71.5%, respectively. Vehicle kinematics were most useful for classification of weather and traffic density while physiology and driver characteristics were useful for classification of sleep deprivation and cell phone use. Furthermore, a second classification scheme was tested that also incorporates information about whether or not other causes of hazardous states are present, though this did not result in higher classification accuracy. In the future, these classifiers could be used to identify both the presence and cause of a driver’s hazardous state, which could serve as the basis for more intelligent intervention systems.
机译:驾驶员的危险身心状态(例如,分神,疲劳,压力和高工作负荷)对驾驶性能有重大影响,并在所有交通事故中占25%至50%。它们是由多种因素引起的,例如使用手机或睡眠不足。然而,尽管已经进行了关于检测危险状态的大量研究,但是大多数研究都没有试图确定危险状态的原因。这样的信息将非常有用,因为它将使智能车辆能够更好地响应检测到的危险状态。因此,这项研究检查了是否可以通过结合驾驶员特性,车辆运动学和生理学指标来自动识别驾驶员的危险状态。 21名健康参与者参加了4次45分钟的模拟驾驶课程,其中有2次被轻度睡眠剥夺。在每个会话中,有八种不同的情况,它们具有不同的天气(晴天或下雪),交通密度和手机使用情况(有或没有手机)。在每种情况下,均监测了四个生理(呼吸,心电图,皮肤电导和体温)和八个运动学运动学测量值。此外,还获得了三个自我报告的驾驶员特征:性格,压力水平和情绪。基于驾驶员特征,车辆运动学和生理信号形成了三个特征集。这三个功能集的所有可能组合用于对睡眠剥夺(困倦与警报),交通密度(低与高),手机使用和天气状况(有雾/雪天与晴天)进行分类,最高准确度为98.8。 %,91.4%,82.3%和71.5%。车辆运动学对于天气和交通密度的分类最有用,而生理学和驾驶员特征对于睡眠剥夺和手机使用的分类则很有用。此外,还测试了第二种分类方案,该方案还结合了有关是否存在危险状态的其他原因的信息,尽管这并未导致更高的分类精度。将来,这些分类器可用于识别驾驶员危险状态的存在和原因,这可作为更智能干预系统的基础。

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