Pothole Detection Using Machine Learning Models

Mayank Dhingra, Rahul Dhingra, Meghna Sharma
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Abstract

Potholes are damage caused to the ground by the formation of water and wear and tear over time. According to statistical data, bad road conditions account for about one- third of the total road accidents which has been increasing exponentially. Potholes have become so common that it has become second nature for people to learn how to spot and avoid them, which causes further accidents. The need of the hour is to build a dependable pothole detection system to accurately detect potholes and warn the drivers and government officials in advance. The process to build such a system is divided into two steps i.e. collection of data and pothole identification. The first step is achieved by taking the data from already available data sets on the Internet. The other step includes labeling the potholes in the data set which is usually done manually. This paper focuses mainly on Visual-based techniques to identify the best detection method by comparing popular Machine Learning models and algorithms. The obtained data set is trained using various transfer learning techniques like You Only Look Once (YOLO)[1] and Single Shot Detector (SSD) [1]. Apart from transfer learning, this paper also focuses on some proposed techniques using Convolutional Neural Net- works (CNN) and classification algorithms like Support Vector Machine (SVM)[21] to identify and localize potholes. The actual size of potholes is calculated using morphological operations, which is a just a straightforward technique to analyze figures using set theory. To analyze every model and find the best model, each model is trained on different sizes of data sets and the obtained result is validated and examined by considering different aspects like speed and accuracy in mind.
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利用机器学习模型检测坑洞
坑洼是由于水的形成和长期磨损对地面造成的破坏。据统计数据显示,道路状况不佳导致的交通事故约占交通事故总数的三分之一,并且呈指数级增长。坑洼已经变得如此普遍,以至于人们学会如何发现和避免坑洼已经成为第二天性,这导致了更多事故的发生。当务之急是建立一个可靠的坑洞探测系统,以准确探测坑洞,并提前向司机和政府官员发出警告。建立这样一个系统的过程分为两个步骤,即收集数据和识别坑洞。第一步是从互联网上已有的数据集中获取数据。另一个步骤包括对数据集中的坑洞进行标注,这通常由人工完成。本文主要关注基于视觉的技术,通过比较流行的机器学习模型和算法来确定最佳检测方法。获得的数据集使用各种迁移学习技术进行训练,如 "只看一次"(YOLO)[1] 和 "单次检测器"(SSD)[1]。除迁移学习外,本文还重点介绍了使用卷积神经网络(CNN)和支持向量机(SVM)[21] 等分类算法识别和定位坑洞的一些建议技术。坑洞的实际大小是通过形态学运算计算出来的,这只是一种利用集合论分析图形的简单技术。为了分析每个模型并找出最佳模型,每个模型都要在不同大小的数据集上进行训练,并通过考虑速度和准确性等不同方面来验证和检查获得的结果。
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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