Eye state detection for driver inattention based on Lucas Kanade optical flow algorithm

H. Hassan, S. Yaacob, Abduljalil Radman, S. A. Suandi
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引用次数: 9

Abstract

Traffic accidents due to drivers inattention has become one of the major factor in road accidents and highway crashers. The problem has led many researchers to develop drivers monitoring systems which can send warning signals to the drivers. One of the active research area related to this issue involve in determining the drivers mental state based on drivers' facial expressions which is non-intrusive as compared to analysis of brain wave, heart rate, excessive body heat. Apart from that, research on facial expression is expanding to the dynamic analysis whereby the temporal data is taken into consideration to determine the state of mind. Lucas Kanade optical flow is one of the methods that is being used to detect motions of objects. The method is later being proven to be capable of detecting facial features motion. However, there are no specific research being done on sleepiness and eye region motion analysis using Lucas Kanade optical flow method. This paper presents an optical flow using the Lucas Kanade algorithm by measuring optical flow on eye region from video sequences. In this stage, the drivers face and eye region are detected using facial feature detector. The optical flow of the eyes region is then computed. Results show that the proposed method can be applied to extract significant temporal data from the eye region.
基于Lucas Kanade光流算法的驾驶员注意力不集中眼状态检测
由于驾驶员注意力不集中造成的交通事故已经成为道路交通事故和公路撞车事故的主要因素之一。这个问题促使许多研究人员开发驾驶员监控系统,该系统可以向驾驶员发送警告信号。与此相关的活跃研究领域之一是根据司机的面部表情来确定司机的精神状态,与分析脑电波、心率、体温过高相比,面部表情是非侵入性的。除此之外,对面部表情的研究正在扩展到动态分析,即考虑时间数据来确定心理状态。Lucas Kanade光流是一种用于检测物体运动的方法。该方法后来被证明能够检测面部特征的运动。然而,目前还没有使用Lucas Kanade光流方法对睡意和眼区运动分析进行具体的研究。本文提出了一种利用Lucas Kanade算法测量视频序列眼睛区域光流的方法。在这一阶段,使用人脸特征检测器检测驾驶员的面部和眼睛区域。然后计算眼睛区域的光流。实验结果表明,该方法可以有效地提取眼部区域的重要时间数据。
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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