Automatic pavement distress severity detection using deep learning

IF 3.4 3区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Road Materials and Pavement Design Pub Date : 2023-11-01 DOI:10.1080/14680629.2023.2276422
Parisa Setayesh Valipour, Amir Golroo, Afarin Kheirati, Mohammadsadegh Fahmani, Mohammad Javad Amani
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Abstract

AbstractRoads are one of the most critical infrastructures, which should be maintained at a high quality of service. For this purpose, road pavement should be assessed cost-effectively. In the past, image processing methods were used to analyze pavement conditions. In recent years, machine learning methods have been employed, while now deep learning methods are applied. Deep learning has outperformed other methods regarding the accuracy and speed of pavement distress evaluation. In this research, a deep learning algorithm called YOLOv5 is deployed to detect pavement block cracking and estimate its severity using images taken from the right of way via a road surface profiler. Two models are successfully trained and tested, one to detect block cracking and the other to predict its severity with a sufficient level of accuracy of 84.5% and 76.6%, respectively. It is concluded that the model not only can detect block cracking but also predict its severity.KEYWORDS: Pavement management systemdeep learningblock crackingobject detectionYOLOannotation Disclosure statementNo potential conflict of interest was reported by the author(s).
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基于深度学习的路面破损程度自动检测
摘要道路是最关键的基础设施之一,必须保持高质量的服务。为此目的,应经济有效地评估道路路面。过去,使用图像处理方法来分析路面状况。近年来采用了机器学习方法,而现在采用了深度学习方法。在路面损伤评估的准确性和速度方面,深度学习优于其他方法。在这项研究中,使用了一种名为YOLOv5的深度学习算法来检测路面块的裂缝,并通过路面剖面仪从道路右侧拍摄图像来估计其严重程度。成功地训练和测试了两个模型,一个用于检测块体开裂,另一个用于预测其严重程度,准确率分别达到84.5%和76.6%。结果表明,该模型不仅可以检测出砌块开裂,而且可以预测其严重程度。关键词:路面管理系统;深度学习;街区裂缝;;
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来源期刊
Road Materials and Pavement Design
Road Materials and Pavement Design 工程技术-材料科学:综合
CiteScore
8.10
自引率
8.10%
发文量
105
审稿时长
3 months
期刊介绍: The international journal Road Materials and Pavement Design welcomes contributions on mechanical, thermal, chemical and/or physical properties and characteristics of bitumens, additives, bituminous mixes, asphalt concrete, cement concrete, unbound granular materials, soils, geo-composites, new and innovative materials, as well as mix design, soil stabilization, and environmental aspects of handling and re-use of road materials. The Journal also intends to offer a platform for the publication of research of immediate interest regarding design and modeling of pavement behavior and performance, structural evaluation, stress, strain and thermal characterization and/or calculation, vehicle/road interaction, climatic effects and numerical and analytical modeling. The different layers of the road, including the soil, are considered. Emerging topics, such as new sensing methods, machine learning, smart materials and smart city pavement infrastructure are also encouraged. Contributions in the areas of airfield pavements and rail track infrastructures as well as new emerging modes of surface transportation are also welcome.
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