一种非侵入式驾驶员睡意检测方法

Kriti Verma, Mehak Beakta, P. Srivastava, N. U. Khan
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引用次数: 0

摘要

司机疲劳被认为是造成世界范围内大量死亡的主要原因。因此,有必要开发一种有助于减少此类事故的系统。在困倦状态下,驾驶员的面部特征与正常状态相比有显著差异。本文提出的系统主要是在记录驾驶员的生理状态后对驾驶员进行检测和报警。我们使用非侵入式方法实时监控受试者,其中观察操作员的眼睛眨眼和嘴型(打哈欠),如果操作员的眼睛关闭超过阈值,或者操作员打哈欠,或者如果两者在同一实例中被检测到,则得出驾驶员的状态以进行预防。本系统采用Python语言设计,采用OpenCV应用程序进行图像处理,采用Viola - Jones算法进行人脸特征检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Non-intrusive Approach for Driver's Drowsiness Detection
Fatigueness of the driver is considered a major cause that account to a large numbers of death worldwide. Thus it becomes necessary to develop a system that can help reduce such accidents. During drowsy state, significant differences in the facial features of the driver are observed in comparison to the normal state. The system proposed in the paper is focused on detection as well as alarming the driver after recording the physiological state of the driver. We made use of the non-intrusive approach which monitors the subject in real-time, wherein the blinking of eyes as well as the mouth shape (yawn) of the operator are observed, and if the operator's eyes are shut for more than the threshold value, or the operator is yawning, or if both of them are detected at the same instance then the driver's state is concluded for precautions. The proposed system is designed using Python Language, and OpenCV application is used for image processing employing the use of Viola - Jones Algorithm for the detection of facial features.
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