基于形状预测器68人脸标志算法的实时疲劳检测

Palaniappan M, Sowmia K R, A. S
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引用次数: 2

摘要

当今世界面临的最重要挑战之一是道路交通事故的增加。驾驶不当和疏忽是造成交通事故的主要原因。这项研究的主要目标是开发一种非侵入式系统,可以检测人体疲劳并提供早期预警。长距离驾驶时不经常停车的司机有昏昏欲睡的危险,有时他们意识到这一点时已经太晚了。司机的困倦或注意力不集中被认为是这类事故的主要因素。驾驶员睡眠监测研究有助于减少交通事故。根据专家的研究,大约四分之一的严重交通事故可归因于昏昏欲睡的司机,他们需要休息,这意味着昏昏欲睡的司机比酒后驾驶造成更多的交通事故。这项技术将使用一个摄像头来跟踪和监控司机的眼睛,通过建立一个地标算法,我们将能够及早发现司机的困倦症状,以避免事故发生。因此,本研究将有助于提前检测驾驶员的疲劳,并以警报和弹出窗口的形式提供警告输出。此外,警告不是自动禁用,而是手动禁用。这将识别疲劳或疲劳,并可用于自动减速车辆。
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Real Time Fatigue Detection Using Shape Predictor 68 Face Landmarks Algorithm
One of the most important challenges confronting the world today is the rise in road accidents. Improper and inattentive driving is the leading cause of road accidents. This study’s main goal is to develop a non-intrusive system that can detect human fatigue and provide an early warning. Drivers who do not stop frequently when driving long distances are at risk of becoming drowsy, which they sometimes do not realise until it is too late. The driver’s drowsiness or lack of concentration is regarded to be a primary factor in such incidents. Driver sleepiness monitoring research could aid in the reduction of accidents. According to expert research, about a quarter of serious highway accidents can be attributed to sleepy drivers who need to rest, which means that sleepy drivers cause more traffic accidents than drink-driving. The technology will employ a camera to follow and monitor drivers’ eyes, and by building a Landmarks algorithm, we will be able to detect sleepiness symptoms in drivers early enough to avoid accidents. As a result, this research will assist in detecting a driver’s tiredness in advance and providing warning output in the form of alarms and pop-up windows. Furthermore, rather than being disabled automatically, the warning will be disabled manually. This will identify tiredness or fatigue and can be used to automatically slow the vehicle down.
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