Driver Hypo-vigilance Detection Based on Eyelid Behavior

M. Sigari
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引用次数: 69

Abstract

Driver face monitoring system is a real-time system that can detect driver fatigue and driver distraction using machine vision approaches. In this paper, a new algorithm is proposed for driver hypo-vigilance detection based on eye-region processing and without explicit eye detection stage. In this method, horizontal projection of top half-segment of facial image is used to extract symptoms of fatigue and distraction. Percentage of eye closure (PERCLOS) and eyelid distance changes during time are used for fatigue detection; and eye closure rate is used for distraction detection. The novelty of our method is in adaptive feature extraction using spatio-temporal processing without explicit eye detection. Processing rate of proposed method is more than 5 frames per second.
基于眼睑行为的驾驶员低警惕性检测
驾驶员面部监测系统是一种利用机器视觉方法检测驾驶员疲劳和注意力分散的实时系统。本文提出了一种基于眼区处理的驾驶员低警惕性检测新算法,该算法不需要明确的眼检测阶段。该方法利用面部图像上半段的水平投影提取疲劳和注意力分散的症状。使用闭眼百分率(PERCLOS)和眼睑距离随时间变化进行疲劳检测;闭眼率用于分心检测。该方法的新颖之处在于在没有明确的眼睛检测的情况下,使用时空处理进行自适应特征提取。该方法的处理速率大于5帧/秒。
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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