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Driver's Fatigue and Drowsiness Detection to Reduce Traffic Accidents on Road

机译:驾驶员疲劳和困倦检测可减少道路上的交通事故

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This paper proposes a robust and nonintrusive system for monitoring driver's fatigue and drowsiness in real time. The proposed scheme begins by extracting the face from the video frame using the Support Vector Machine (SVM) face detector. Then a new approach for eye and mouth state analysis -based on Circular Hough Transform (CHT)- is applied on eyes and mouth extracted regions. Our drowsiness analysis method aims to detect micro-sleep periods by identifying the iris using a novel method to characterize driver's eye state. Fatigue analysis method based on yawning detection is also very important to prevent the driver before drowsiness. In order to identify yawning, we detect wide open mouth using the same proposed method of eye state analysis. The system was tested with different sequences recorded in various conditions and with different subjects. Some experimental results about the performance of the system are presented.
机译:本文提出了一种鲁棒性和非侵入性的系统,用于实时监测驾驶员的疲劳和困倦。所提出的方案开始于使用支持向量机(SVM)人脸检测器从视频帧中提取人脸。然后,基于循环霍夫变换(CHT)的一种新的眼和口状态分析方法被应用到了眼和口的提取区域。我们的睡意分析方法旨在通过使用新颖的方法来表征驾驶员的眼睛状态,通过识别虹膜来检测微睡眠期。基于打哈欠检测的疲劳分析方法对于防止驾驶员睡意也很重要。为了识别打哈欠,我们使用相同的提议的眼睛状态分析方法检测张开的嘴巴。使用在各种条件下和不同主题下记录的不同序列对系统进行了测试。提出了一些有关系统性能的实验结果。

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