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首页> 外文期刊>IIE Transactions on Occupational Ergonomics and Human Factors >Proposal of a Method to Predict Subjective Rating on Drowsiness Using Physiological and Behavioral Measures
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Proposal of a Method to Predict Subjective Rating on Drowsiness Using Physiological and Behavioral Measures

机译:建议使用生理学和行为学方法来预测睡意的主观评分的方法

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Background: From the viewpoint of automotive safety, it is useful to detect a decrease in arousal level and to warn drivers of the risk of a traffic accident. Although many measures of drowsy states have been developed, effective methods for predicting drowsy driving states and to warn drivers of these states have not been established. Purpose: The aim of this study was to explore the effectiveness of physiological and behavioral evaluation measures for predicting a drivers' subjective drowsiness using a regression model. Methods: Eight participants completed the study, which involved simulated driving. They were required to steer and maintain their vehicle at the centerline and to maintain the distance between their own car and a preceding car. Physiological measures were obtained (electroencephalography, heart rate variability and blink frequency), along with behavioral measures (neck bending angle, back pressure, foot pressure, and tracking error), and participants reported subjective drowsiness once every minute. Drowsy states were predicted via three multinomial logistic regression models consisting of different independent variables - Model A: both physiological and behavioral measures, Model B: only behavioral measures, and Model C: only physiological measures. For each model, prediction accuracies were examined, and the length of the data window used for predicting drowsiness was explored. Results: When both physiological and behavioral measures were used, prediction accuracy was 96.8%. The interval used for attaining the highest prediction accuracy was 100 seconds (from 120 to 20 seconds before the prediction). When only physiological measures were used, prediction accuracy was 90.2%, and accuracy was 94.9% using only behavioral measures. Conclusions: The proposed multinomial model could attain higher prediction accuracy when both physiological and behavioral measures are used and is potentially useful for the development of drowsiness warning systems.
机译:背景:从汽车安全的角度来看,检测唤醒水平的下降并警告驾驶员发生交通事故的风险非常有用。尽管已经开发了许多关于困倦状态的措施,但是尚未建立预测困倦驾驶状态并警告这些状态的驾驶员的有效方法。目的:本研究的目的是探索使用回归模型来预测驾驶员主观嗜睡的生理和行为评估措施的有效性。方法:八名参与者完成了这项研究,其中包括模拟驾驶。他们被要求在中心线操纵和保持车辆,并保持自己的汽车与前一辆汽车之间的距离。获得了生理指标(脑电图,心率变异性和眨眼频率)以及行为指标(颈部弯曲角度,背压,足底压力和跟踪误差),并且参与者每分钟报告一次主观嗜睡。睡意状态是通过三个由不同自变量组成的多项式Lo​​gistic回归模型预测的-模型A:生理和行为指标,模型B:仅行为指标,模型C:仅有生理指标。对于每个模型,都检查了预测准确性,并探讨了用于预测睡意的数据窗口的长度。结果:当同时使用生理和行为指标时,预测准确性为96.8%。用于获得最高预测精度的时间间隔为100秒(从预测前的120到20秒)。仅使用生理指标时,预测准确性为90.2%,仅使用行为指标则为94.9%。结论:当同时使用生理和行为措施时,所提出的多项式模型可以达到较高的预测准确性,并且可能对睡意预警系统的开发有用。

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