Smart City Gnosys

Smart city article details

Title Convolutional Neural Network For Pothole Identification In Urban Roads
ID_Doc 16106
Authors Lakshminarayanan S.; Konidhala J.
Year 2024
Published International Journal Of Advances In Signal And Image Sciences, 10, 1
DOI http://dx.doi.org/10.29284/ijasis.10.1.2024.1-12
Abstract Safe and effective mobility relies on regularly inspecting and maintaining urban road infrastructure. Vehicles and road users are put in danger by potholes, which is why their quick identification and repair are of the utmost importance. Using Convolutional Neural Networks (CNN) architecture, this research presents a new method for detecting and reporting potholes. To reliably detect and classifier pothole damage under a variety of lighting and environmental conditions, the proposed method incorporates a CNN model trained on a broad collection of road surface images. Urban roads and automobiles equipped with Internet of Things (IoT) sensors enhance the system to allow real-time reporting and location of potholes. Due to their built-in cameras and GPS modules, these devices can take images of the road and send their findings of potholes and exact locations to a central server. After these detections are made, the server uses them to prioritize the repair work and alert the proper authorities and road users via a specialized mobile app where the potholes are detected. The continuous problem of road maintenance may be solved in an efficient and scalable manner by integrating CNN with an IoT infrastructure. The device increases road safety and vehicle operating conditions while also making pothole identification and reporting procedures more efficient. Extensive testing has shown the suggested method is accurate in detecting potholes, can withstand many types of operations, and helps with proactive road repair plans. Smart city technologies demonstrating integration of IoT, and advanced machine learning algorithms may enhance the management of municipal infrastructure. © 2024, XLESCIENCE. All rights reserved.
Author Keywords geographical localization; real-time reporting; remote monitoring; Road Infrastructure maintenance; road surface inspection


Similar Articles


Id Similarity Authors Title Published
45593 View0.931Liu J.; Wang H.; Wei J.; Nan J.Research On Road Pothole Recognition Based On Deep Convolutional Neural Networks2024 IEEE 2nd International Conference on Image Processing and Computer Applications, ICIPCA 2024 (2024)
58038 View0.929Mehta S.; Singh A.Towards Autonomous Road Maintenance: Cnn-Fl Integration For Pothole Detection Systems2024 4th Asian Conference on Innovation in Technology, ASIANCON 2024 (2024)
17906 View0.921Chu 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)
204 View0.911Alshammari S.; Song S.3Pod: Federated Learning-Based 3 Dimensional Pothole Detection For Smart TransportationISC2 2022 - 8th IEEE International Smart Cities Conference (2022)
44435 View0.911Kulambayev B.; Gleb B.; Katayev N.; Menglibay I.; Momynkulov Z.Real-Time Road Damage Detection System On Deep Learning Based Image AnalysisInternational Journal of Advanced Computer Science and Applications, 15, 9 (2024)
44425 View0.905Bhosale S.B.; Ponnusamy S.Real-Time Pothole Detection Using Yolov7: An Efficient Deep Learning Approach For Road Safety And Maintenance2025 International Conference on Data Science and Business Systems, ICDSBS 2025 (2025)
17939 View0.904Huang Y.-T.; Jahanshahi M.R.; Shen F.; Mondal T.G.Deep Learning-Based Autonomous Road Condition Assessment Leveraging Inexpensive Rgb And Depth Sensors And Heterogeneous Data Fusion: Pothole Detection And QuantificationJournal of Transportation Engineering Part B: Pavements, 149, 2 (2023)
42511 View0.903Sai K.K.; Kumar D.D.V.; Sahrudhay A.; Dharavath K.Pothole Detection Using Deep Learning2023 2nd International Conference on Futuristic Technologies, INCOFT 2023 (2023)
313 View0.903Hijji M.; Iqbal R.; Kumar Pandey A.; Doctor F.; Karyotis C.; Rajeh W.; Alshehri A.; Aradah F.6G Connected Vehicle Framework To Support Intelligent Road Maintenance Using Deep Learning Data FusionIEEE Transactions on Intelligent Transportation Systems, 24, 7 (2023)
44480 View0.9Srikanth M.; Krishna N.S.V.S.S.J.; Krishna S.J.S.; Irfan S.; Venkat T.G.Real-Time Vehicle Detection And Road Condition Prediction For Smart Urban AreasProceedings of the 4th International Conference on Ubiquitous Computing and Intelligent Information Systems, ICUIS 2024 (2024)