模拟疲劳驾驶行为

Xiaohui Hu, R. Eberhart, B. Foresman
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引用次数: 8

摘要

过度困倦可能会导致机动车碰撞的风险增加,这可能是因为驾驶者在驾驶时睡着了,或者是因为他/她由于困倦/注意力不集中而对道路事件和驾驶任务的注意力减少了。这项研究旨在研究非侵入性的可测量模式,以预测与驾驶相关的嗜睡和注意力不集中。从印第安纳大学医院招募的17名实习医师在驾驶模拟器上进行了五次驾驶测试。记录驾驶、睡眠日记、问卷调查和脑电图(EEG)信息,用于后续数据分析。利用统计和计算智能工具,确定了与注意力不集中和困倦相关的一些基本驾驶行为。结果表明,横向车道位置标准差和方向盘角度标准差的组合是衡量驾驶行为与道路风险关系的可能指标。衍生的模式也与其他非侵入性的困倦测量相一致,如Epworth困倦量表和Stanford困倦量表。
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Modeling drowsy driving behaviors
Excessive sleepiness may result in an increased risk of a motor vehicle crash either because the motorist falls asleep while driving or because he/she experiences reduced attention to road events and driving tasks due to sleepiness/inattention. This study was designed to investigate noninvasive measurable patterns that predict driving-related sleepiness and inattention. Seventeen residents-in-training (residents) recruited from the Indiana University Hospital took five-session driving tests on a driving simulator. Driving, sleep diary, questionnaire, and electroencephalogram (EEG) information were recorded for subsequent data analysis. With statistical and computational intelligence tools, some basic driving behaviors associated with inattention and sleepiness were identified. Results suggest that a combination of standard deviation of lateral lane position and standard deviation of steering wheel angle is a possible measure of the relationships between driving behaviors and road risks. The derived patterns are also consistent with other non-invasive measurements of sleepiness such as Epworth Sleepiness Scale and Stanford Sleepiness Scale.
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