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Driver's Drowsiness Monitoring and Alarming Auto-System Based on EOG Signals

机译:基于EOG信号的驾驶员嗜睡监测预警系统

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The main reason for road accidents is the driver's drowsiness which leads to a considerable number of car crashes, injuries, lots of fatalities, and significant economic losses. Driver's drowsiness is represented as a state which varies between sleep and wakefulness, that decreases cognitive skills and impacts the capability of performing the task of driving. This serious issue needs to develop an effective vigilance monitoring system capable of decreasing accidents by alerting the driver under various bad driving situations. For detecting drowsiness, vehicle-based methods (such as estimating the level of drowsiness depending on the movements of the steering wheel), behavioral-based methods (detecting the driver visual features using various resources such as facial expressions, eye movements, head movements, etc.), and physiologic-based methods (detecting the earlier stages of driver's drowsiness depending on physiological signals) can be utilized. This paper is focused on the designing and implementation of a driver assistance system which includes a driver's monitoring and alarming by using intrusive acquisition methods, called Electrooculography (EOG) signals. An embedded system based on ATmega2560 microcontroller on the Arduino board has been used to implement the EOG signal acquisition circuit. The developed system used several measurements to extract the features from EOG signals which makes it very sensitive to detect the driver's drowsiness. Furthermore, K Nearest Neighbors classifier (KNN) is used to give good accuracies. This system creates a low-cost device capable of quickly alerting the driver to ensure their safety. The experimental results show the efficiency and reliability of the proposed driver assistance system.
机译:道路交通事故的主要原因是驾驶员的困倦,这导致相当多的车祸,受伤,大量死亡和大量经济损失。驾驶员的睡意表现为睡眠和清醒之间变化的状态,会降低认知能力并影响执行驾驶任务的能力。这个严重的问题需要开发一种有效的警戒监视系统,该系统能够通过在各种不良驾驶情况下警告驾驶员来减少事故。为了检测睡意,可以使用基于车辆的方法(例如,根据方向盘的运动来估计睡意的程度),基于行为的方法(使用面部表情,眼睛运动,头部运动等各种资源来检测驾驶员的视觉特征,等),可以使用基于生理的方法(根据生理信号检测驾驶员的困倦早期)。本文着重于驾驶员辅助系统的设计和实现,该系统包括使用称为电子眼动(EOG)信号的侵入式采集方法对驾驶员进行监视和报警。 Arduino板上基于ATmega2560微控制器的嵌入式系统已用于实现EOG信号采集电路。开发的系统使用了几次测量来从EOG信号中提取特征,这使得检测驾驶员的睡意非常敏感。此外,K最近邻分类器(KNN)用于提供良好的准确性。该系统创建了一种低成本设备,能够快速提醒驾驶员以确保其安全。实验结果表明了所提出的驾驶员辅助系统的效率和可靠性。

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