Eye detection for a real-time vehicle driver fatigue monitoring system

R. Coetzer, G. Hancke
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引用次数: 67

Abstract

With the vast amount of vehicles on roads worldwide on any given time of day, the severity of fatigue related accidents have become a major concern. The obvious solution to prevent or at least decrease fatigue related accidents, is to ensure that the driver rests frequently. However, the simple fact of the matter is that frequent resting periods cannot be effectively enforced, and as a result there is a need for a system to monitor the level of driver fatigue in real-time. The ultimate goal of this research is to develop a camera-based driver fatigue monitoring system, centered around the tracking of driver's eyes, since the eyes provide the most information with regards to fatigue. The most critical aspect of eye tracking is to first accurately detect the eyes, and although a number of eye trackers have already been illustrated in the literature, the process of eye detection has seldom been described in much detail. Given a number of possible eye candidate sub-images, eye detection is in essence the classification of these sub-images as either eyes or non-eyes. To the knowledge of the authors, different classification techniques have not been directly compared for the purpose of eye detection, and therefore the aim of this paper is to evaluate different classification techniques to determine which technique will be the most suitable for a driver fatigue monitoring system. The classification techniques that have been considered are artificial neural networks (ANN), support vector machines (SVM) and adaptive boosting (AdaBoost). Results have shown that AdaBoost will be the most suitable eye classification technique for a real-world driver fatigue monitoring system.
一种用于车辆驾驶员疲劳实时监测的眼睛检测系统
在世界范围内,任何时候都有大量的车辆行驶在道路上,与疲劳有关的事故的严重程度已成为一个主要问题。防止或至少减少疲劳相关事故的明显解决方案是确保驾驶员经常休息。然而,问题的简单事实是,频繁的休息时间不能有效地强制执行,因此需要一个系统来实时监测驾驶员的疲劳程度。这项研究的最终目标是开发一个基于摄像头的驾驶员疲劳监测系统,以跟踪驾驶员的眼睛为中心,因为眼睛提供了有关疲劳的最多信息。眼动追踪最关键的方面是首先要准确地检测眼睛,虽然文献中已经有许多眼动仪,但眼睛检测的过程很少被详细描述。给定一些可能的眼睛候选子图像,眼睛检测本质上是将这些子图像分类为眼睛或非眼睛。据作者所知,不同的分类技术还没有被直接比较用于眼睛检测,因此本文的目的是评估不同的分类技术,以确定哪种技术最适合驾驶员疲劳监测系统。目前考虑的分类技术有人工神经网络(ANN)、支持向量机(SVM)和自适应增强(AdaBoost)。结果表明,AdaBoost将是最适合用于现实驾驶员疲劳监测系统的眼睛分类技术。
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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