Özcan, BarisBarisÖzcanSchmiedecke, Fabian AlexanderFabian AlexanderSchmiedecke2024-10-222024-10-222024-09-1835. Forum Bauinformatik, fbi 2024: 415-422https://hdl.handle.net/11420/49630Crack detection is essential for maintaining the integrity and safety of infrastructure such as bridges, roads, and buildings. Traditional manual inspection methods are labor-intensive and error-prone, which underscores the need for automated solutions. Advances in machine learning have shown promise in automating this task, but further improvements are necessary to address specific challenges, such as the thin and elongated nature of cracks, varying lighting conditions, and background noise. This paper presents a refined loss function designed to enhance the performance of machine learning models in detecting fine-structured concrete cracks. This loss function considers the spatial distances between predicted and actual crack locations, penalizing false positives that are far from true crack positions. In this way, our approach emphasizes the thin nature and continuity of cracks, ensuring that even the smallest features are accurately detected. Our initial experiments demonstrate that this strategy offers a more accurate and reliable solution to crack detection.enhttps://creativecommons.org/licenses/by/4.0/Computer VisionConcrete Crack DetectionImage SegmentationLoss FunctionsMachine LearningTechnology::620: EngineeringTechnology::624: Civil Engineering, Environmental EngineeringTechnology::621: Applied Physics::621.3: Electrical Engineering, Electronic EngineeringDistance-based Loss Function for Machine Learning in Image Segmentation of Concrete CracksConference Paper10.15480/882.1353310.15480/882.13533Conference Paper