Tire Wear Detection for Accident Avoidance Employing Convolutional Neural Networks

S.M. Mynul Karim, Yeaminur Rahman, Md. Abdul Hai, Rezwana Mahfuza
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引用次数: 3

Abstract

Tires are one of the most essential components of a vehicle, as they actively contribute to driving dynamics. However, they are often among the most overlooked when it comes to proper scrutiny and maintenance. More often than not, the general masses are found to be negligent of the condition of their tires. Treadwear and sidewall damage occur in abundance, and not tending to these problems can have devastating consequences in the long run. There is an innumerable number of road accident cases reported which were found to have been caused due to use of damaged and worn-out tires, and these occurrences are more prevalent in highways and during the rainy season. Despite being a widespread issue, many people are unable to identify good usable tires from worn-out ones, increasing their likelihood of using dangerous unsafe tires on roads. This paper introduces a model that can differentiate between good and worn-out tires, which has been implemented using Image Processing. The model takes external pictures of tires provided by the user as input and provides a verdict on its condition after comparing them with the model’s dataset using the machine learning algorithms DenseNet and MobileNet. This model has been made keeping in mind that it can be further used with appropriate hardware for implementing in real-life applications. By enforcing said implementation by the concerned regulatory bodies, tire-related accidents can be sharply reduced and damage to human life and property can be prevented on public roads.
基于卷积神经网络的事故避免轮胎磨损检测
轮胎是车辆最重要的部件之一,因为它们对驾驶动力有积极的影响。然而,当涉及到适当的检查和维护时,它们往往是最容易被忽视的。人们常常发现一般群众对他们的轮胎状况疏忽大意。跑步磨损和侧壁损伤经常发生,如果不注意这些问题,从长远来看可能会造成毁灭性的后果。据报道,由于使用损坏和磨损的轮胎而造成的交通事故案例数不胜数,这些事故在高速公路和雨季更为普遍。尽管这是一个普遍存在的问题,但许多人无法从破旧的轮胎中识别出好的可用轮胎,这增加了他们在道路上使用危险的不安全轮胎的可能性。本文介绍了一种利用图像处理技术实现的良好轮胎和磨损轮胎的识别模型。该模型将用户提供的轮胎外部照片作为输入,并使用机器学习算法DenseNet和MobileNet将其与模型的数据集进行比较后,提供对其状况的判断。创建此模型时要记住,它可以与适当的硬件一起进一步使用,以便在实际应用程序中实现。通过有关监管机构执行上述规定,可以大大减少与轮胎有关的事故,并可以防止在公共道路上对人的生命和财产造成损害。
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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