基于物联网的疲劳驾驶实时检测系统,预防道路交通事故

Md. Yousuf Hossain, Fabian Parsia George
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引用次数: 29

摘要

目前,疲劳驾驶已成为交通事故的主要问题之一。据统计,大量的交通事故是由于疲劳驾驶造成的,这些事故造成了严重的伤亡。因此,为了防止驾驶员在驾驶过程中打瞌睡而发生事故,正在进行各种各样的研究。一些传统方法采用基于车辆的测量方法来设计系统,然而,这种测量方法受到道路结构、车辆类型和驾驶技能的高度影响。其他方法则采用心理测量方法,这种方法往往能更准确地监测驾驶员的困倦状态。然而,这种技术通常是侵入性的,因为电极需要放置在头部和身体上。此外,使用主观测量作为系统输入的现有研究很少,但是,这种方法会分散驾驶员的注意力,导致结果不明确。在本文中,我们提出了一个绝对非侵入性和实时性的系统。我们提出的系统使用闭眼率作为输入参数来检测驾驶员的睡意。如果闭眼率低于标准比率,则会通过蜂鸣器向驾驶员发出警报。在我们的系统中,使用Pi相机捕捉驾驶员眼睛的图像,整个系统使用树莓派。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IOT Based Real-Time Drowsy Driving Detection System for the Prevention of Road Accidents
At present time, drowsy driving has become one of the major issues of the traffic collision. According to statistics, a large number of road accidents occur due to drowsy driving which results in severe injuries and deaths. For this reason, various studies were done in designing systems that can examine the driver fatigue and alert him beforehand, thus preventing him to fall asleep behind the wheel and cause an accident. Some traditional approaches used vehicle-based measures to design their system, however, such measurements are highly influenced by the structure of the road, type of vehicle and the driving skill. Other approaches used psychological measures for their system that tend to provide better accuracy in monitoring the drowsiness of the driver. However, such techniques are usually intrusive as electrodes are required to be placed on the head and body. Furthermore, there are few existing researches in which subjective measurements are used as the input for the system, but, such methods can distract the driver and lead to an ambiguous result. In this paper, we proposed a system that is absolutely nonintrusive and real-time. Our proposed system used the eye closure ratio as input parameter to detect the drowsiness of the driver. If the eye closure ratio deteriorates from the standard ratio, the driver is alerted with the help of a buzzer. For our system, a Pi camera is used to capture the images of the driver's eye and the entire system is incorporated using Raspberry-Pi.
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