驾驶员困倦检测实时

Daksh Khetan, Arun Nawani, Anshul .., Ms. Surinder Kaur
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引用次数: 1

摘要

在现代生活中,嗜睡是交通事故的主要原因之一,其中许多是致命的。分析统计数据,可以假设大多数交通事故的发生是由于困倦导致的严重伤害和死亡。出于这个原因,人们进行了各种各样的研究,设计出可以检测驾驶员疲劳并在严重错误发生之前提醒他们的程序。这可以防止他们入睡和发生事故。一些最常见的方法使用基于汽车的方法来设计自己的系统。但这些传统措施受到道路结构、车辆类型和驾驶轮操控性等其他因素的强烈影响。一些方法使用他们系统的心理学方法,通常在驾驶员的困倦监测中提供最准确和一致的结果。然而,这种技术非常繁琐,因为电极需要放置在头部和身体上。此外,很少有研究将独立的测量方法用于系统安装,但这种方法可能会使驾驶员感到困惑,并导致意想不到的后果。在本文中,我们提出了一个非中断的实时程序。我们提出的系统将其归类为睡眠剥夺。该模型与闭眼和睁眼的大型数据库相结合来产生结果。每当发现司机昏昏欲睡时,巴斯就会通知他。在我们的模型中,我们使用标准的前视智能手机摄像头,并使用我们获得的信息在我们的网站上产生结果。这可能比使用额外的硬件更经济。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driver Drowsiness Detection in Real-time
In modern life, drowsiness is one of the major causes of road accidents, many of which are fatal. Analyzing statistics, it can be assumed that most road accidents occur as a result of drowsiness leading to serious injury and death. For this reason, various studies have been done on designing programs that can detect driver fatigue and alert them before a serious error occurs. This prevents them from falling asleep and having an accident. Some of the most common methods use automotive-based methods to design their own system. But these traditional measures were strongly influenced by other factors such as road structure, vehicle type and driver-wheel driveability. Some methods use psychological methods of their system that often provide the most accurate and consistent results in the driver's drowsiness monitoring. However, such techniques are very tedious as the electrodes need to be placed on the head and body. In addition, few studies are available where independent measurements are used as system installation, but such methods can confuse the driver and lead to unintended consequences. In this paper, we have proposed a non-disruptive and real-time program. Our proposed system classifies it as sleep deprivation. The model is fed with a large database of closed eyes and open eyes to produce results. The driver is notified by Buzz every time he is found drowsy. In our model, we use a standard forward-looking smartphone camera and use the information we have gained to produce results on our website. This can be more economical than using additional hardware.
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