Traffic accident detection using random forest classifier

Nejdet Dogru, A. Subasi
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引用次数: 156

Abstract

The Internet of Things (IoT) has been growing in recent years with the improvements in several different applications in the military, marine, intelligent transportation, smart health, smart grid, smart home and smart city domains. Although IoT brings significant advantages over traditional information and communication (ICT) technologies for Intelligent Transportation Systems (ITS), these applications are still very rare. Although there is a continuous improvement in road and vehicle safety, as well as improvements in IoT, the road traffic accidents have been increasing over the last decades. Therefore, it is necessary to find an effective way to reduce the frequency and severity of traffic accidents. Hence, this paper presents an intelligent traffic accident detection system in which vehicles exchange their microscopic vehicle variables with each other. The proposed system uses simulated data collected from vehicular ad-hoc networks (VANETs) based on the speeds and coordinates of the vehicles and then, it sends traffic alerts to the drivers. Furthermore, it shows how machine learning methods can be exploited to detect accidents on freeways in ITS. It is shown that if position and velocity values of every vehicle are given, vehicles' behavior could be analyzed and accidents can be detected easily. Supervised machine learning algorithms such as Artificial Neural Networks (ANN), Support Vector Machine (SVM), and Random Forests (RF) are implemented on traffic data to develop a model to distinguish accident cases from normal cases. The performance of RF algorithm, in terms of its accuracy, was found superior to ANN and SVM algorithms. RF algorithm has showed better performance with 91.56% accuracy than SVM with 88.71% and ANN with 90.02% accuracy.
基于随机森林分类器的交通事故检测
近年来,随着军事、海洋、智能交通、智能健康、智能电网、智能家居和智能城市领域的几种不同应用的改进,物联网(IoT)一直在增长。尽管物联网为智能交通系统(ITS)带来了比传统信息和通信(ICT)技术显著的优势,但这些应用仍然非常罕见。尽管道路和车辆安全不断提高,物联网也在不断改进,但在过去的几十年里,道路交通事故一直在增加。因此,有必要找到一种有效的方法来降低交通事故的频率和严重程度。为此,本文提出了一种车辆之间相互交换微观车辆变量的智能交通事故检测系统。该系统基于车辆的速度和坐标,使用从车辆自组织网络(VANETs)收集的模拟数据,然后向驾驶员发送交通警报。此外,它还展示了如何利用机器学习方法在ITS中检测高速公路上的事故。结果表明,如果给定每辆车的位置和速度值,就可以很容易地分析车辆的行为,从而检测出事故。利用人工神经网络(ANN)、支持向量机(SVM)和随机森林(RF)等监督式机器学习算法对交通数据进行处理,建立事故案例与正常案例的区分模型。射频算法在准确率方面优于人工神经网络和支持向量机算法。RF算法的准确率为91.56%,优于SVM(88.71%)和ANN(90.02%)。
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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