利用生理和行为指标对驾驶员睡意进行高精度预测的可能性探讨

A. Murata
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引用次数: 2

摘要

本研究旨在探讨驾驶人主观困倦的生理和行为评价方法的有效性。脑电图、心率变异性(RRV3)和眨眼频率是生理测量。行为学测量包括颈垂角(水平和垂直)、背压、足压、坐面COP、身体运动频率、驾驶模拟器任务跟踪误差、踏板操作次数标准差。困倦状态的预测采用多项逻辑回归模型,其中生理和行为测量以及困倦的主观评价分别对应于自变量和因变量。对上述评价指标的多种组合得到了预测精度。最大、最小预测精度分别为0.962和0.876。几乎所有组合的预测精度都在0.9以上。此外,还明确了预测前20s和40s之间的20-s间隔是获得较高预测精度的适当间隔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of Possibility of Driver’s Drowsiness Prediction with High Accuracy using Both Physiological and Behavioral Measures
The aim of this study was to explore the effectiveness of physiological and behavioral evaluation measures for predicting drivers’ subjective drowsiness. EEG, heart rate variability (RRV3), and blink frequency were physiological measures. Behavioral measures included neck vending angle (horizontal and vertical), back pressure, foot pressure, COP on sitting surface, frequency of body movement, tracking error in driving simulator task, and standard deviation of quantity of pedal operation. Drowsy states were predicted by using multinomial logistic regression model where physiological and behavioral measures and subjective evaluation of drowsiness corresponded to independent variables and a dependent variable, respectively. The prediction accuracy was obtained for a variety of combinations of the evaluation measures above. The maximum and minimum prediction accuracies were 0.962 and 0.876, respectively. Almost all combinations led to the prediction accuracy of more than 0.9. Moreover, it has been made clear that the proper interval used for attaining higher prediction accuracy is a 20-s interval between 20s and 40s before prediction.
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