一种提高道路安全的实时交通事故检测系统

Mariam Rahman, R. Rahman, Khadiza Akter Supty, Rakefa Tus Sabah, Md. Rajibul Islam, Md. Rashedul Islam, Nadeem Ahmed
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引用次数: 2

摘要

如今,道路交通事故是一个严重的问题,特别是在发达国家,那里的规章制度没有得到适当的维护。大多数交通事故是由于驾驶员的失误或对车内驾驶员的敌对行为造成的。简而言之,车辆内部发生的任何恶劣行为都可能导致交通事故。如果可以实时检测到这些行为,意外事故就可以大大减少。由于近年来交通事故的日益频繁,这引起了研究人员的好奇心,他们正试图减轻车内糟糕的活动。在这方面,深度学习算法可以提供一个实时的恶劣活动检测系统,用于车辆内部,目的是减少道路事故,从而提高乘客的安全。在这项调查中,创建了一个车辆内部恶劣活动的数据集,由10400张不同的照片组成,分为9类。据我们所知,这是这方面最大的数据集。然后,成功采用You Only Look Once (Yolov4)实时活动检测模型,获得了99.402%的出色准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Real Time Abysmal Activity Detection System Towards the Enhancement of Road Safety
Nowadays, road accidents are a serious worry particularly in the developed countries where the rules and regulations are not maintained properly. The majority of traffic accidents are caused by the drivers' error or hostile behavior against the drivers inside the vehicle. In a nutshell, any type of abysmal action occurring inside the vehicle can result in a traffic accident. If these behaviors can be detected in real time, unexpected accidents can be reduced in a significant manner. Due to the increasing frequency of road accidents over the years, it has attracted the researchers' curiosity, and they are attempting to mitigate the abysmal activities inside the vehicle. In this regard, the deep learning algorithms can present a real-time abysmal activity detection system for inside use in a vehicle with the goal of reducing road accidents and thus increasing the passengers' safety. In this investigation, a dataset of abysmal activity inside a vehicle has been created, consisting of 10400 diverse photos divided into 9 classes. To the best of our knowledge, it is the largest dataset in this regard. Then, a real-time activity detection model called You Only Look Once (Yolov4) has been successfully employed, which obtained an outstanding accuracy of 99.402%.
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