Hybrid concrete crack segmentation and quantification across complex backgrounds without a large training dataset

DH Kang, S Benipal, YJ Cha - Data Science in Engineering, Volume 9 …, 2022 - Springer
DH Kang, S Benipal, YJ Cha
Data Science in Engineering, Volume 9: Proceedings of the 39th IMAC, A …, 2022Springer
To date, deep learning-based semantic segmentation techniques have been applied to
crack segmentation problems; however, it requires much time and many resources to
prepare a large volume of the ground truth of a dataset labeled at the pixel level. Hybrid
crack segmentation (Kang et al., Autom Constr 118: 103291, 2020) is based on the
integration of a faster region-based convolutional neural network (faster R-CNN) as the
deep learning-based object detection method and modified tubularity flow field (TuFF) as …
Abstract
To date, deep learning-based semantic segmentation techniques have been applied to crack segmentation problems; however, it requires much time and many resources to prepare a large volume of the ground truth of a dataset labeled at the pixel level. Hybrid crack segmentation (Kang et al., Autom Constr 118:103291, 2020) is based on the integration of a faster region-based convolutional neural network (faster R-CNN) as the deep learning-based object detection method and modified tubularity flow field (TuFF) as computer vision-based segmentation. In this paper, we further conducted experimental studies to investigate the performance of the developed hybrid concrete crack segmentation method using additional images with complex backgrounds in challenging environments.
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