利用图像处理技术通过警报声实时检测驾驶员是否昏昏欲睡

Subisha K. B, S. S. T
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引用次数: 0

摘要

疲劳驾驶是造成事故和死亡的主要原因之一。大多数传统的方法要么是基于载体的,要么是基于行为的,要么是基于心理的。主要研究表明,大约20%的交通事故与疲劳有关。昏昏欲睡的驾驶是非常危险的,许多交通事故都与司机在驾驶时睡着并随后失去对车辆的控制有关。然而,疲劳和困倦的最初迹象可以在危急情况出现之前被发现。测量驾驶员疲劳程度的一种直接方法是测量驾驶员的困倦状态。因此,检测驾驶员的睡意状态对挽救驾驶员的生命财产安全具有十分重要的意义。研制了一种低成本、实时、高精度的驾驶员睡意检测系统。使用网络摄像头提取视频和图像。在这项工作中,面部地标被用来检测闭眼、打哈欠和头部。Haar级联算法用于检测图像中的目标,而不考虑其在图像中的比例和位置。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。
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Real Time Driver Drowsiness Detection with Alert Sound Using Image Processing
Drowsy driving is one of the major causes of accident and death. Most of the conventional methods are either vehicle based, behavioral based or psychological based. Major studies have suggested that around 20% of all road accidents are fatigue related. Drowsy Driving can be extremely dangerous, a lot of road accidents are related to the driver falling asleep while driving and subsequently losing control of the vehicle. However, initial signs of fatigue and drowsiness can be detected before a critical situation arises. A direct way of measuring driver fatigue is measuring the state of the driver drowsiness. So it is very important to detect the drowsiness of the driver to save life and property. A low-cost, real-time Driver’s Drowsiness Detection System is developed with high accuracy. The Video and image are extracted using the webcam. In this work, Facial Landmarks are used to detect the eye closure yawn and head. Haar Cascade Algorithm is used in the proposed work to detect objects in images, irrespective of their scale in image and location. 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.
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