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Driver Sleepiness Classification Based on Physiological Data and Driving Performance From Real Road Driving

机译:基于生理数据和真实道路驾驶性能的驾驶员嗜睡分类

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The objective of this paper is to investigate if signal analysis and machine learning can be used to develop an accurate sleepiness warning system. The developed system was trained using the supposedly most reliable sleepiness indicators available, extracted from electroencephalography, electrocardiography, electrooculography, and driving performance data (steering behavior and lane positioning). Sequential forward floating selection was used to select the most descriptive features, and five different classifiers were tested. A unique data set with 86 drivers, obtained while driving on real roads in real traffic, both in alert and sleep deprived conditions, was used to train and test the classifiers. Subjective ratings using the Karolinska sleepiness scale (KSS) was used to split the data as sufficiently alert (KSS <= 6) or sleepy (KSS >= 8). KSS = 7 was excluded to get a clearer distinction between the groups. A random forest classifier was found to be the most robust classifier with an accuracy of 94.1% (sensitivity 86.5%, specificity 95.7%). The results further showed the importance of personalizing a sleepiness detection system. When testing the classifier on data from a person that it had not been trained on, the sensitivity dropped to 41.4%. One way to improve the sensitivity was to add a biomathematical model of sleepiness amongst the features, which increased the sensitivity to 66.2% for participant-independent classification. Future works include taking contextual features into account, using classifiers that takes full advantage of sequential data, and to develop models that adapt to individual drivers.
机译:本文的目的是研究信号分析和机器学习是否可以用于开发准确的困倦预警系统。使用从脑电图,心电图,眼电图和驾驶性能数据(转向行为和车道定位)中提取的所谓最可靠的嗜睡指标,对开发的系统进行了培训。顺序向前浮动选择用于选择最具描述性的功能,并测试了五个不同的分类器。在警报和睡眠不足的情况下,在真实交通中实际道路上行驶时获得的具有86位驾驶员的独特数据集用于训练和测试分类器。使用Karolinska嗜睡量表(KSS)的主观评分将数据划分为足够警觉(KSS <= 6)或困倦(KSS> = 8)。 KSS = 7被排除在外,以使各组之间更加清晰。发现随机森林分类器是最可靠的分类器,准确度为94.1%(灵敏度为86.5%,特异性为95.7%)。结果进一步表明了个性化嗜睡检测系统的重要性。当使用未经训练的人的数据测试分类器时,敏感性降至41.4%。一种提高敏感性的方法是在特征之间添加嗜睡的生物数学模型,这将与参与者无关的分类的敏感性提高到66.2%。未来的工作包括考虑上下文特征,使用充分利用顺序数据的分类器,以及开发适合各个驱动程序的模型。

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