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AI‐enabled airport runway pavement distress detection using dashcam imagery

Arman Malekloo, Xiaoyue Cathy Liu, David Sacharny

2024Computer-Aided Civil and Infrastructure Engineering14 citationsDOIOpen Access PDF

Abstract

Maintaining airport runways is crucial for safety and efficiency, yet traditional monitoring relies on manual inspections, prone to time consumption and inaccuracy. This study pioneers the utilization of low-cost dashcam imagery for the detection and geolocation of airport runway pavement distresses, employing novel deep-learning frameworks. A significant contribution of our work is the creation of the first public dataset specifically designed for this purpose, addressing a critical gap in the field. This dataset, enriched with diverse distress types under various environmental conditions, enables the development of an automated, cost-effective method that substantially enhances airport maintenance operations. Leveraging low-cost dashcam technology in this unique scenario, our approach demonstrates remarkable potential in improving the efficiency and safety of airport runway inspections, offering a scalable solution for infrastructure management. Our findings underscore the benefits of integrating advanced imaging and artificial intelligence technologies, paving the way for advancements in airport maintenance practices.

Topics & Concepts

RunwayDistressEnvironmental scienceComputer scienceRemote sensingTransport engineeringEngineeringGeologyCartographyPsychologyGeographyClinical psychologyInfrastructure Maintenance and MonitoringAsphalt Pavement Performance EvaluationGeophysical Methods and Applications
AI‐enabled airport runway pavement distress detection using dashcam imagery | Litcius