Intelligent Vehicle Alert System for Drowsy Drivers Using Vision Transformers

Gourikrishna J. S, Greeshma S. S, Devika Suresh S, Sruthy S. S
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Abstract

Road accidents can happen due to various causes but drowsiness, rash driving, drinking, and driving are among the most important factors. Driver drowsiness is a serious threat to road safety. Drowsiness affects the drivers’ sensory, cognitive, and psychomotor abilities, which are necessary for safe driving. Most driver monitoring systems already embedded in vehicles to detect drowsiness use vehicle-based features (i.e., measures) computed by outward-facing cameras for lane tracking or steering wheel angle sensors to analyse lane keeping and steering control behaviour. Though various drowsiness detection systems have been developed during last decade based on many factors, still the systems were demanding an improvement in terms of efficiency, accuracy, cost, speed, and availability, etc. Drowsiness is a term in which a driver feels sleepy while driving and this can detect it by blinking of eyes and yawning. In this project, proposed an integrated approach depends on the eye and mouth closure status (PERCLOS)) face features of the driver. The Face Detector is used to locate the face of a driver in an image and returns as a bounding box or rectangle box values. The Facial Landmark Shape Predictors uses two algorithms namely fixed thresholding and dynamic frame thresholding to extract the facial features that help in calculating essential parameters, i.e., Eye Aspect Ratio (EAR) and Mouth Opening Ratio (MOR). The two methods use both MOR and EAR parameters to decide the driver’s drowsiness level. Then it Alert or warn the driver by playing sounds or voice message. This helps to find the status of the closed eyes or opened mouth like yawning, and any frame finds that has hand gestures like nodding or covering opened mouth with hand as innate nature of humans when trying to control the sleepiness. This system uses computer vision technology which uses cameras to predict the driver’s fatigue and alert the driver to take a rest.
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使用视觉变压器的疲劳驾驶智能车辆警报系统
道路交通事故的发生有多种原因,但最重要的因素是嗜睡、鲁莽驾驶、饮酒和驾驶。司机困倦严重威胁着道路安全。嗜睡会影响驾驶员的感觉、认知和精神运动能力,而这些能力对于安全驾驶是必要的。大多数已经嵌入到车辆中的驾驶员监控系统用于检测睡意,使用基于车辆的特征(即测量),通过向外摄像头计算车道跟踪或方向盘角度传感器来分析车道保持和转向控制行为。在过去的十年中,尽管基于多种因素开发了各种各样的睡意检测系统,但这些系统在效率、准确性、成本、速度和可用性等方面仍然需要改进。睡意是指司机在开车时感到困倦,这可以通过眨眼和打哈欠来检测。在本项目中,提出了一种基于驾驶员眼睛和嘴巴闭合状态(PERCLOS)面部特征的综合方法。人脸检测器用于定位图像中驱动程序的人脸,并以边界框或矩形框值的形式返回。面部标志形状预测器使用固定阈值和动态帧阈值两种算法来提取面部特征,这些特征有助于计算关键参数,即眼宽比(EAR)和张嘴比(MOR)。这两种方法都使用MOR和EAR参数来确定驾驶员的困倦程度。然后通过播放声音或语音信息提醒或警告司机。这有助于发现闭上眼睛或张开嘴巴的状态,如打哈欠,任何框架都发现有手势,如点头或用手捂住张开的嘴,这是人类在试图控制嗜睡时的天生天性。该系统采用计算机视觉技术,通过摄像头预测驾驶员的疲劳程度,提醒驾驶员休息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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