基于Haar级联分类器的驾驶员困倦检测

S. S. Saranya, Ravi Mytresh, Mylavarapu Manideep
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引用次数: 0

摘要

驾驶员困倦检测是一种使用各种传感器和算法来检测驾驶员何时疲劳或困倦的系统。当司机昏昏欲睡时,他们并没有处于完全警觉状态,相反,他们只是有点累了。世界上大多数交通事故都是由疲劳和困倦的司机造成的。这可以通过监测眼球运动、面部表情和头部位置,以及分析驾驶模式(如突然变道或长时间不动方向盘)来实现。然后,该系统可以提醒司机休息或靠边休息,从而潜在地防止因疲劳驾驶而导致的事故。它也可以用于商用车,以确保驾驶员和道路上其他人的安全。如今,越来越多的事故是由眼疲劳引起的。这些特征说明驾驶员的状态不正常。为了检测睡意,使用EAR(眼睛纵横比)计算水平和垂直眼睛标志之间的距离之比。所提出的方法计算地标,因为地标的识别精度足以这样做。本研究确定眼睛宽高比(EAR),并提取它,EAR是表征每帧中眼睛张开程度的单个标量。最后,Haar Cascade开发的SVM分类器将眨眼识别为EAR值的模式。然而,驾驶员疲劳和分心都可能导致反应时间变慢,驾驶效率降低,发生事故的风险更高。如果确定了驾驶员的疲劳程度和估计的困倦程度,输出将被传送到检测系统,警报将被激活。驾驶员疲劳引起的事故的真实数字很难确定,因为经常少报。司机通常不会注意到从疲劳到打瞌睡的细微变化。这就解释了为什么继续在这一领域的研究是至关重要的,其目标是减少司机困倦事故的频率,并激励司机困倦检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Driver Drowsiness Detection using Haar Cascade Classifier
Driver drowsiness detection is a system that uses various sensors and algorithms to detect when a driver is becoming fatigued or drowsy. When a driver is drowsy, they are not operating in full alert mode rather, they are only somewhat tired. The majority of traffic accidents throughout the world are caused by fatigued and sleepy drivers. This can be done through monitoring eye movements, facial expressions, and head position, as well as analyzing driving patterns such as sudden lane changes or prolonged periods of inactivity on the steering wheel. The system can then alert the driver to take a break or pull over to rest, potentially preventing accidents caused by drowsy driving. It can also be used in commercial vehicles for safety of drivers and other people on the road. Accidents in the present day are increasingly being caused by this consisting of ocular fatigue. These characteristics show that the driver's condition is not right. For the purpose of detecting sleepiness, the ratio of distances between the horizontal and vertical eye landmarks is calculated using the EAR (Eye Aspect Ratio). The proposed method calculates the landmark since the landmarks are identified precisely enough to do so. This study determines the eye aspect ratio (EAR), a single scalar quantity that characterizes the opening of the eyes in each frame, and extracts it. Finally, an SVM classifier developed by Haar Cascade recognizes eye blinks as a pattern of EAR values. However, both driver fatigue and distraction may result in slower response times, reduced driving efficiency, and a higher risk of being involved in an accident. The output is delivered to the detection system, and the alert will be activated, if the driver's degree of fatigue and the estimated amount of sleepiness are determined. The true number of accidents brought on by driver fatigue is difficult to ascertain because it is frequently under reported. The driver typically doesn't notice the small change from being tired to nodding off. This explains why it is critical to continue research in this area with the goal of reducing the frequency of driver drowsy accidents and motivating for a driver sleepiness detection system.
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