JOURNAL ARTICLE

Automatic pavement distress severity detection using deep learning

Abstract

Roads 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:
Deep learning Block (permutation group theory) Cracking Distress Artificial intelligence Road surface Computer science Machine learning Engineering Civil engineering Mathematics Medicine

Metrics

19
Cited By
3.89
FWCI (Field Weighted Citation Impact)
53
Refs
0.91
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Infrastructure Maintenance and Monitoring
Physical Sciences →  Engineering →  Civil and Structural Engineering
Asphalt Pavement Performance Evaluation
Physical Sciences →  Engineering →  Civil and Structural Engineering
Non-Destructive Testing Techniques
Physical Sciences →  Engineering →  Mechanical Engineering

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