Smart City Gnosys

Smart city article details

Title Autonomous Road Pavement Inspection And Defect Analysis For Smart City Maintenance
ID_Doc 11486
Authors Shahbazi L.; Majidi B.; Movaghar A.
Year 2021
Published Proceedings of the 5th International Conference on Pattern Recognition and Image Analysis, IPRIA 2021
DOI http://dx.doi.org/10.1109/IPRIA53572.2021.9483534
Abstract The detection and repair of the cracks in the road pavement is a very time consuming task which should be performed periodically in order to maintain the safety and quality of the road network. There are various types of road pavement cracks and each type requires different management and repair method and also each type indicates a different problem in that section of the road. In this paper, an autonomous machine learning based visual inspection system for detection and classification of the road pavement cracks is proposed. The proposed framework uses deep neural networks in order to detect and classify longitudinal, alligator and asphalt cracks. A dataset of images from different road conditions and various pavement cracks is collected. The proposed framework increases the speed and scale of road pavement analysis and repair and can be used for smart road maintenance management in the smart cities. The experimental results show that the accuracy of the proposed framework is 95% for detection and classification of the cracks in the road pavements. © 2021 IEEE.
Author Keywords convolutional neural network; image processing; Road pavement crack detection; smart city


Similar Articles


Id Similarity Authors Title Published
4307 View0.904El-Din Hemdan E.; Al-Atroush M.E.A Review Study Of Intelligent Road Crack Detection: Algorithms And SystemsInternational Journal of Pavement Research and Technology (2025)
28235 View0.902Xie R.; Chen M.; Tao M.; Ding K.; Chen H.Gradient And Self-Attention Enabled Convolutional Neural Network For Crack Detection In Smart CitiesProceedings of the International Conference on Parallel and Distributed Systems - ICPADS (2023)
43583 View0.901Gonçalves M.; Marques T.; Gaspar P.D.; Soares V.N.G.J.; Caldeira J.M.L.P.Prototype Solution For Detecting And Signaling Road Pavement Defects Based On Computer Vision Techniques; [Protótipo De Solução Para Detetar E Sinalizar Defeitos Em Pavimentos Rodoviários Baseado Em Técnicas De Visão Computacional]RISTI - Revista Iberica de Sistemas e Tecnologias de Informacao, 2023, 52 (2023)
7069 View0.895Bhatt A.K.; Biswas S.Ai-Enabled Road Health Monitoring System For Smart CitiesLecture Notes in Electrical Engineering, 1146 LNEE (2024)
11330 View0.894Lv Z.; Cheng C.; Lv H.Automatic Identification Of Pavement Cracks In Public Roads Using An Optimized Deep Convolutional Neural Network ModelPhilosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, 381, 2254 (2023)
54527 View0.893Gorodnichev M.; Marsova E.; Gematudinov R.; Dzhabrailov K.Technical Vision For Monitoring And Diagnostics Of The Road Surface Quality In The Smart City ProgramE3S Web of Conferences, 164 (2020)
17906 View0.89Chu H.-H.; Saeed M.R.; Rashid J.; Mehmood M.T.; Ahmad I.; Iqbal R.S.; Ali G.Deep Learning Method To Detect The Road Cracks And Potholes For Smart CitiesComputers, Materials and Continua, 75, 1 (2023)
44340 View0.89Mehajabin N.; Ma Z.; Wang Y.; Tohidypour H.R.; Nasiopoulos P.Real-Time Deep Learning Based Road Deterioration Detection For Smart CitiesInternational Conference on Wireless and Mobile Computing, Networking and Communications, 2022-October (2022)
7037 View0.888Khedr M.A.; Abdelaziz M.Ai-Driven Robotic System For Predictive Maintenance: Urban Road Defect Detection In Smart Cities2024 International Conference on Computer and Applications, ICCA 2024 (2024)
16106 View0.887Lakshminarayanan S.; Konidhala J.Convolutional Neural Network For Pothole Identification In Urban RoadsInternational Journal Of Advances In Signal And Image Sciences, 10, 1 (2024)