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Drowsiness estimation under driving environment by heart rate variability and/or breathing rate variability with logistic regression analysis

机译:通过Logistic回归分析通过心率变异性和/或呼吸速率变异性估算驾驶环境下的睡意

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摘要

It is widely known that many traffic accidents occur every year, not only in Japan but also in the world. Drowsiness or sleepiness, which is the cause of dozing at the wheel, happens regardless of the physical condition of the driver after having meals or during midnight. This means that to avoid driver's drowsiness or sleepiness by oneself is hard. Therefore, various systems have been proposed to prevent traffic accidents caused by dozing at the wheel. In this study, we examined the relationship between psychological drowsiness during driving, which was evaluated by the Japanese version of the Karolinska sleepiness scale (KSS-J) and physiological parameters extracted from electrocardiogram and respiration signals. Then we tried to estimate the existence of drowsiness using logistic regression analysis on that parameters. In this study, since KSS-J score 7 indicates sleepy, we determined KSS-J score 7 and more as drowsiness state. The logistic regression method was performed using the half of the data for each subject and used the remaining data as the testing data. As a result, we got 71% of accuracy with heart rate variability (HRV), 72% of accuracy with breathing rate variability (BRV), 81% of accuracy with both signals in the whole subjects using logistic regression. Therefore, it is suggested that HRV and BRV parameters are relevant to drowsiness.
机译:众所周知,不仅在日本而且全世界每年都发生许多交通事故。无论驾驶员在进餐后或午夜期间的身体状况如何,都会发生睡意或困倦,这是在方向盘上打zing睡的原因。这意味着很难避免驾驶员的困倦或困倦。因此,已经提出了各种系统来防止由于在车轮处打zing而引起的交通事故。在这项研究中,我们检查了驾驶中心理睡意之间的关系,该关系由日文版的卡罗林斯卡嗜睡量表(KSS-J)和从心电图和呼吸信号中提取的生理参数进行了评估。然后,我们尝试通过对该参数进行逻辑回归分析来估计睡意的存在。在这项研究中,由于KSS-J得分7表示困倦,我们将KSS-J得分7和更多定为困倦状态。使用每个受试者的一半数据执行逻辑回归方法,并将剩余数据用作测试数据。结果,使用逻辑回归,在整个受试者中,我们的心率变异性(HRV)的准确度为71%,呼吸速率变异性(BRV)的准确度为72%,两种信号的准确度均为81%。因此,建议HRV和BRV参数与嗜睡有关。

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