基于眼状态分析的实时睡意识别

V. J, Gowri Shankar K.S, Dhavasi K, T. M, Soundharya C
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引用次数: 2

摘要

根据去年关于道路交通事故的报告,这种致命交通事故的主要原因是司机的疏忽行为和嗜睡。这个问题揭示了这样一个系统的需求,它可以识别驾驶员的困倦状态,并在任何事故发生之前向驾驶员发出警报信号。因此,本工作建立了基于眨眼时间的困倦检测和事故避免系统。首先,根据眼睛宽高比(EAR)检测眼睛的开合状态;进一步分析了眼睛状态由开到闭的变化过程中眨眼的持续时间或次数。然后,当眨眼时间超过一定限制时,它会识别睡意状态,并通过报警器向驾驶员发送警报信息。我们开发的系统在打哈欠数据集(YawDD)上显示出约92.5%的准确率。关键词:眨眼检测;睡意检测;眼宽比(EAR)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Drowsiness Identification Based On Eye State Analysis
As per the previous year’s report concerning to road crashes indicates that the principal cause of such a fatal road accidents is because of negligence behavior as well as drowsiness of driver. This problem reveals the requirement of such a system that can recognize drowsiness state of driver and gives alert signal to the driver before the occurrence of any accidents. Therefore, this proposed work has established drowsy detection as well as accident avoidance system based on the eye blink duration. Here, first the open and close state of eye are detected based on the eye aspect ratio (EAR). Further, the blink duration or count during the changes of eye state from open to close are analyzed. Then, it identifies the state of drowsiness, when blink duration becomes more than a certain limits and sends the alert message to the driver through the alarm. Our developed system has shown the accuracy of 92.5 % approx on yawning dataset (YawDD). Key Word: Eye blink detection; Drowsiness Detection; Eye Aspect Ratio (EAR)
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