机器学习在驾驶员睡意检测中的应用

Megha Bhushan, Deepankar Joshi, Tavleen Kaur Gujral, Sinku Kumar Singh, Aishbir Singh, Arun Negi
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引用次数: 0

摘要

在当今世界,道路交通事故主要是由于酒后驾驶或司机疲劳造成的。因此,判断驾驶员是否感到疲劳的最好方法是检查驾驶员的状态,即睡意。随着道路交通事故的增多,驾驶员睡眠检测已成为一项重要的检测指标,并被广泛接受。由于大多数情况下都没有考虑到驾驶员困倦造成的事故数量,因此很难确定驾驶员困倦造成的事故数量。从疲劳到打瞌睡的转变通常不会被司机注意到。这导致需要通过创建驾驶员困倦检测系统来解决这一问题,以减少因困倦引起的事故。开发这种应用需要考虑的参数很少。其中一个参数包括计算特定时期眨眼的次数。提议的工作将持续记录眼球运动。如果司机被证明是昏昏欲睡的,那么一个警告警报将启动。为了实现该应用程序,使用了OpenCV库和ML算法。这项工作将有助于避免道路交通事故,从而挽救一些人的生命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Machine Learning in Driver Drowsiness Detection
In today’s world, road accidents are mainly caused due to drunken driving, or a driver being fatigued. Therefore, the best way to judge whether the driver is feeling fatigue or not is by checking the state of the driver i.e., drowsiness. With the increase in the road accidents, driver drowsiness detection has become an important factor and is widely accepted. Determining the number of accidents caused by driver drowsiness has become quite difficult as it is not considered most of the time. The shift from feeling fatigue to snoozing usually goes unnoticed by the driver. This led to the requirement of addressing this issue by creating a driver drowsiness detection system to decrease the accidents caused due to drowsiness. Few parameters should be considered to develop such application. One of these parameters includes counting the number of eye blinks in a particular period. The proposed work will keep a record of the eye movements continuously. If the driver is proven to be drowsy then a warning alarm will be initiated. To implement the proposed application, OpenCV library and ML algorithms have been used. This work will benefit in saving several human lives by avoiding road accidents.
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