Please use this identifier to cite or link to this item: http://repositorio.lnec.pt:8080/jspui/handle/123456789/1018438
Title: Efficient pavement crack monitoring for road life cycle management
Authors: Pena, R.
Marques, N.
Batista, F. A.
Manso, J.
Marcelino, J.
Keywords: Road Pavements;Cracks;Image Processing;Neural Networks;Convolutional Filters;Open Digital Maps
Issue Date: Apr-2024
Publisher: Transport Research Arena TRA2024
Abstract: Road pavements are vital for transportation infrastructure, yet they deteriorate over time due to traffic loads and environmental factors, resulting in cracks and damage. This paper introduces an innovative method for crack detection on road pavements using digital imagery. Our approach incorporates geo-localization, annotates, characterizes, and quantifies crack severity. This empowers experts to monitor crack progression, a critical element in pavement management. The methodology allows for seamless result comparison and augments existing techniques, aiding in condition assessment and conservation strategy determination. Timely detection of cracks enables proactive maintenance, preventing structural degradation, and ensuring user safety and comfort. Leveraging deep learning and open-source frameworks like TensorFlow and QGIS, our approach automates road pavement image analysis and crack identification, providing a cost-effective, accessible solution for crack detection. This research offers significant advantages in resource efficiency and accessibility, especially in areas without regular manual inspections or dedicated vehicles, thereby enhancing road pavement monitoring and maintenance.
URI: http://repositorio.lnec.pt:8080/jspui/handle/123456789/1018438
Appears in Collections:DT/NIT - Comunicações a congressos e artigos de revista

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