4.6 Article

Computer Vision Based Pothole Detection under Challenging Conditions

期刊

SENSORS
卷 22, 期 22, 页码 -

出版社

MDPI
DOI: 10.3390/s22228878

关键词

pothole detection; pavement distress; adverse conditions; Yolo v3

资金

  1. European Regional Development Fund [ITMS 313011V334]

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This study focuses on automatic detection of road potholes using Yolo v3 model. It investigates the impact of adverse conditions on pothole detection and develops a dataset with images recorded under different light and weather conditions.
Road discrepancies such as potholes and road cracks are often present in our day-to-day commuting and travel. The cost of damage repairs caused by potholes has always been a concern for owners of any type of vehicle. Thus, an early detection processes can contribute to the swift response of road maintenance services and the prevention of pothole related accidents. In this paper, automatic detection of potholes is performed using the computer vision model library, You Look Only Once version 3, also known as Yolo v3. Light and weather during driving naturally affect our ability to observe road damage. Such adverse conditions also negatively influence the performance of visual object detectors. The aim of this work was to examine the effect adverse conditions have on pothole detection. The basic design of this study is therefore composed of two main parts: (1) dataset creation and data processing, and (2) dataset experiments using Yolo v3. Additionally, Sparse R-CNN was incorporated into our experiments. For this purpose, a dataset consisting of subsets of images recorded under different light and weather was developed. To the best of our knowledge, there exists no detailed analysis of pothole detection performance under adverse conditions. Despite the existence of newer libraries, Yolo v3 is still a competitive architecture that provides good results with lower hardware requirements.

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