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Early Detection of Driver Drowsiness Utilizing Machine Learning based on Physiological Signals, Behavioral Measures, and Driving Performance

机译:利用基于生理信号,行为措施和驾驶性能的机器学习对驾驶员睡意进行早期检测

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Driver drowsiness is one of the most causes of traffic accidents worldwide. To prevent such accidents, it is necessary to detect driver drowsiness as early as possible. In previous studies, it was confirmed that decreasing arousal levels affect physiological indices, behavioral indices, and driving performance. The goal of this study is to classify the alert states of drivers, particularly the slightly drowsy state, based on physiological indices, behavioral measures, and driving performance. First, the relationship between the arousal level of a driver, physiological signals, such as electroencephalogram and electrocardiogram signals, behavioral measures, and driving performance is investigated based on analysis of data measured by a driving simulator (DS) and driver monitoring system. Next, to classify the alert and the slightly drowsy states utilizing machine learning algorithms, a total of 32 features are extracted from the measured data over a period of 10 seconds. Four machine learning algorithms, namely logistic regression, support vector machines, the k-nearest neighbor classifier, and random forest (RF), are utilized for the classification of driver drowsiness in this study. As a result, it is confirmed that the RF method can obtain up to 81.4% accuracy when distinguishing between alert and slightly drowsy states. This result demonstrates the feasibility of driver drowsiness detection based on hybrid measures over a 10-second time period with high accuracy.
机译:驾驶员的困倦是全球交通事故的最主要原因之一。为了防止这种事故,有必要尽早发现驾驶员的睡意。在先前的研究中,已确认降低的唤醒水平会影响生理指标,行为指标和驾驶性能。这项研究的目的是根据生理指标,行为指标和驾驶表现对驾驶员的警觉状态进行分类,尤其是轻微困倦的状态。首先,基于对驾驶模拟器(DS)和驾驶员监控系统测量的数据的分析,研究了驾驶员的唤醒水平,诸如脑电图和心电图信号之类的生理信号,行为量度以及驾驶性能之间的关系。接下来,为了利用机器学习算法对警报和轻微困倦状态进行分类,在10秒的时间内从测量数据中提取了总共32个特征。在这项研究中,使用了四种机器学习算法,即逻辑回归,支持向量机,k最近邻分类器和随机森林(RF),对驾驶员睡意进行分类。结果,证实了在区分警觉状态和轻微困倦状态时,RF方法可以获得高达81.4%的准确度。该结果证明了在10秒钟的时间段内基于混合措施的驾驶员睡意检测的可行性,且准确性很高。

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