Enhanced pothole detection system using YOLOX algorithm

Mohan Prakash B, Sriharipriya K.C
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引用次数: 0

Abstract

The road is the most commonly used means of transportation and serves as a country’s arteries, so it is extremely important to keep the roads in good condition. Potholes that happen to appear in the road must be repaired to keep the road in good condition. Spotting potholes on the road is difficult, especially in a country like India where roads stretch millions of kilometres across the country. Therefore, there is a need to automate the identification of potholes with high speed and real-time precision. YOLOX is an object detection algorithm and our main goal of this article is to train and analyse the YOLOX model for pothole detection. The YOLOX model is trained with a pothole dataset and the results obtained are analysed by calculating the accuracy, recall and size of the model which is then compared to other YOLO algorithms. The experimental results in this article show that the YOLOX-Nano model predicts potholes with higher accuracy compared to other models while having low computational costs. We were able to achieve an Average Precision (AP) value of 85.6% from training the model and the total size of the model is 7.22 MB. The pothole detection capabilities of the newly developed YOLOX algorithm have never been tested before and this paper is one of the first to detect potholes using the YOLOX object detection algorithm. The research conducted in this paper will help reduce costs and increase the speed of pothole identification and will be of great help in road maintenance.

使用 YOLOX 算法的增强型坑洞检测系统
道路是最常用的交通工具,也是一个国家的大动脉,因此保持道路状况良好极为重要。道路上出现的坑洼必须得到修补,以保持路况良好。发现道路上的坑洼是很困难的,尤其是在印度这样一个道路绵延数百万公里的国家。因此,有必要以高速和实时精确的方式自动识别坑洞。YOLOX 是一种物体检测算法,本文的主要目标是训练和分析用于检测坑洞的 YOLOX 模型。我们使用坑洞数据集对 YOLOX 模型进行了训练,并通过计算模型的准确度、召回率和大小对所获得的结果进行了分析,然后将其与其他 YOLO 算法进行了比较。本文的实验结果表明,与其他模型相比,YOLOX-Nano 模型预测坑洞的准确率更高,同时计算成本较低。通过训练该模型,我们获得了 85.6% 的平均精度 (AP),模型总大小为 7.22 MB。新开发的 YOLOX 算法的坑洞检测能力以前从未经过测试,本文是首批使用 YOLOX 物体检测算法检测坑洞的论文之一。本文所进行的研究将有助于降低坑洞识别的成本并提高识别速度,对道路维护有很大帮助。
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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CiteScore
3.90
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