为昏昏欲睡的司机准备的追踪器

S. Memon, M. Memon, Sania Bhatti, T. J. Khanzada, A. A. Memon
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引用次数: 5

摘要

开车时打瞌睡是造成致命事故的主要原因。识别驾驶员的睡意是衡量驾驶员睡意最可靠的方法之一。本文创建了一个跟踪器,该跟踪器计划评估驾驶员在整个驾驶过程中的疲劳、疲劳和转移。所组成的框架是一个非侵入式的持续检查框架,它由摄像头组成,对驾驶员的动作保持警惕,以检测驾驶员的睡意。所开发的算法在目前发表的任何论文中都是独一无二的,这是该项目的主要目标。该系统处理从视频输入提取的图像中检测眼睛的问题。已经考虑了所有可能的操作,并相应地生成了输出。睡意是通过观察司机的眨眼模式来判断的。如果发现眼睛在阈值给定的特定时间段内闭着,该框架就会确定驾驶员正在打瞌睡,并发出通知标志。该系统采用Haar级联目标检测器,使用OpenCV(开源计算机视觉库)从输入图像中检测眼睛。该系统也能够在低光照条件下工作。
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Tracker for sleepy drivers at the wheel
Sleepiness behind the wheel is the major contribution to fatal accidents. Recognizing the drowsiness of the driver is one of the surest methods for measuring driver drowsiness. In this paper a tracker has been created which plans to evaluate driver's fatigue, exhaustion, and diversion throughout driving. The framework composed is a non-intrusive constant checking framework and it consists of camera which keeps a vigilant eye on driver's movements to detect drowsiness. The algorithm developed is unique to any currently published papers, which was a primary objective of the project. The system deals with detecting eyes in an extracted image from video input. All the possible actions have been considered and output is generated accordingly. Drowsiness is determined by observing the eye blinking patterns of the driver. If eyes are found to be closed for a particular time period given by threshold value, the framework reaches the determination that the driver is nodding off and issues a notice flag. The system is implemented using Haar cascade object detector using OpenCV (Open Source Computer Vision Library), which detects eyes from the input image. The system is also able to work under low lighting conditions.
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