Deep Learning for Segmentation of Cracks in High-Resolution Images of Steel Bridges

A Kompanets, G Pai, R Duits, D Leonetti… - arXiv preprint arXiv …, 2024 - arxiv.org
A Kompanets, G Pai, R Duits, D Leonetti, B Snijder
arXiv preprint arXiv:2403.17725, 2024arxiv.org
Automating the current bridge visual inspection practices using drones and image
processing techniques is a prominent way to make these inspections more effective, robust,
and less expensive. In this paper, we investigate the development of a novel deep-learning
method for the detection of fatigue cracks in high-resolution images of steel bridges. First, we
present a novel and challenging dataset comprising of images of cracks in steel bridges.
Secondly, we integrate the ConvNext neural network with a previous state-of-the-art encoder …
Automating the current bridge visual inspection practices using drones and image processing techniques is a prominent way to make these inspections more effective, robust, and less expensive. In this paper, we investigate the development of a novel deep-learning method for the detection of fatigue cracks in high-resolution images of steel bridges. First, we present a novel and challenging dataset comprising of images of cracks in steel bridges. Secondly, we integrate the ConvNext neural network with a previous state- of-the-art encoder-decoder network for crack segmentation. We study and report, the effects of the use of background patches on the network performance when applied to high-resolution images of cracks in steel bridges. Finally, we introduce a loss function that allows the use of more background patches for the training process, which yields a significant reduction in false positive rates.
arxiv.org
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