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Efficient driver drowsiness detection at moderate levels of drowsiness

机译:在中等睡意水平下有效地进行驾驶员睡意检测

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Previous research on driver drowsiness detection has focused primarily on lane deviation metrics and high levels of fatigue. The present research sought to develop a method for detecting driver drowsiness at more moderate levels of fatigue, well before accident risk is imminent. Eighty-seven different driver drowsiness detection metrics proposed in the literature were evaluated in two simulated shift work studies with high-fidelity simulator driving in a controlled laboratory environment. Twenty-nine participants were subjected to a night shift condition, which resulted in moderate levels of fatigue; 12 participants were in a day shift condition, which served as control. Ten simulated work days in the study design each included four 30-min driving sessions, during which participants drove a standardized scenario of rural highways. Ten straight and uneventful road segments in each driving session were designated to extract the 87 different driving metrics being evaluated. The dimensionality of the overall data set across all participants, all driving sessions and all road segments was reduced with principal component analysis, which revealed that there were two dominant dimensions: measures of steering wheel variability and measures of lateral lane position variability. The latter correlated most with an independent measure of fatigue, namely performance on a psychomotor vigilance test administered prior to each drive. We replicated our findings across eight curved road segments used for validation in each driving session. Furthermore, we showed that lateral lane position variability could be derived from measured changes in steering wheel angle through a transfer function, reflecting how steering wheel movements change vehicle heading in accordance with the forces acting on the vehicle and the road. This is important given that traditional video-based lane tracking technology is prone to data loss when lane markers are missing, when weather conditions are bad, or in darkness. Our research findings indicated that steering wheel variability provides a basis for developing a cost-effective and easy-to-install alternative technology for in-vehicle driver drowsiness detection at moderate levels of fatigue.
机译:先前关于驾驶员嗜睡检测的研究主要集中在车道偏离度量和高疲劳水平上。本研究试图开发一种在即将发生事故风险之前,在较适度的疲劳水平下检测驾驶员睡意的方法。在两项模拟的轮班工作研究中,在受控的实验室环境中使用高保真模拟器驾驶,评估了文献中提出的八十七种不同的驾驶员睡意检测指标。 29名参与者处于夜班状态,导致中等程度的疲劳。 12名参与者处于白班状态,作为对照。研究设计中的10个模拟工作日各包括4个30分钟的驾驶时间,在此期间,参与者驾驶乡村公路的标准场景。在每个驾驶会话中指定了十条平直的路段,以提取正在评估的87种不同的驾驶指标。主成分分析降低了所有参与者,所有驾驶会话和所有路段的整体数据集的维度,这表明存在两个主要维度:方向盘可变性度量和横向车道位置可变性度量。后者与疲劳的独立测量最相关,即在每次驾驶之前进行的心理运动警惕性测试的表现。我们在八个弯路段中复制了我们的发现,用于每个驾驶环节的验证。此外,我们表明,横向车道位置的可变性可以通过传递函数从方向盘角度的测量变化得出,反映了方向盘运动如何根据作用在车辆和道路上的力来改变车辆的行驶方向。考虑到传统的基于视频的车道跟踪技术在缺少车道标志,天气条件恶劣或黑暗中易于丢失数据,这一点非常重要。我们的研究结果表明,方向盘可变性为开发一种经济有效且易于安装的替代技术提供了基础,该技术可用于中等疲劳程度的车载驾驶员睡意检测。

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