The Driver's Attention Level

Ionut-Adrian Tarba, Mihail Gaianu, Sebastian-Aurelian Ștefănigă
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引用次数: 2

Abstract

Road accidents are directly proportional to the number of cars on the market. Without car safety systems, this number will keep rising. The main factor for the accidents are drowsiness and fatigue. These can be detected by analysing images with the driver so, an example of a driver monitoring system may include a monitoring camera, mounted in front of the driver. A method based on machine learning and computer vision can be a solution to solve the problem of driver safety. The objectives of our work includes an analysis of different approaches of driver monitoring systems and the implementation of a system based on convolutional neural networks which analyze the images coming from a monochrome infrared monitoring camera placed in front of the driver seat. The goal of this work is to decide if the driver is attentive or not (attentive) on the road. Our research was done by implementing a classifier based on AlexNet architecture and return one of the 6 attention classed. To improve the system accuracy, the face was detected using DNN Face Detector (using OpenCV approach). The final system is able to detect when the driver is not paying attention to the road, based on existing test data.
驾驶员的注意力水平
道路交通事故与市场上的汽车数量成正比。如果没有汽车安全系统,这个数字还会继续上升。造成事故的主要因素是困倦和疲劳。这些可以通过与驾驶员一起分析图像来检测,因此,驾驶员监控系统的一个示例可能包括安装在驾驶员前方的监控摄像头。一种基于机器学习和计算机视觉的方法可以解决驾驶员安全问题。我们的工作目标包括分析驾驶员监控系统的不同方法,以及基于卷积神经网络的系统的实现,该系统分析来自驾驶员座位前方的单色红外监控摄像机的图像。这项工作的目的是判断驾驶员在路上是否专心。我们的研究是通过实现一个基于AlexNet架构的分类器来完成的,并返回6个注意力分类中的一个。为了提高系统的准确性,使用DNN人脸检测器(使用OpenCV方法)对人脸进行检测。最后,该系统能够根据现有的测试数据,检测驾驶员何时不注意路况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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