Abstract
Abstract
The aging of concrete structures is a threat to public safety; therefore, maintenance and repair of these structures have been highly emphasized. However, regular inspections to detect concrete cracks that rely on operators lack objectivity and consume a lot of time. To overcome this limitation, high-resolution image processing and deep learning have been adopted. Nevertheless, cracks on structure surfaces are still challenging to detect owing to the variety of shapes of cracks and the dependence of recognition performance on image conditions. Herein, we propose a new concrete crack detection method that applies the semantic segmentation technique using 1196 concrete crack images and labeled images produced in this study. A new segmentation algorithm is developed using a hierarchical convolutional neural network to improve speed, and a multi-loss update method is proposed to improve accuracy. The performance of the proposed network is evaluated in terms of accuracy and speed. The results show that the proposed network produces a 2.165% increase in the intersection over union of crack, 65.90% decrease in the average inference time, and 99.90% decrease in the number of parameters compared with the best accuracy results using existing segmentation networks. It is expected that the application of this improved crack detection method will result in faster and more accurate crack detection and, consequently, improved safety, thereby making it suitable for application in structure safety inspections.
Funder
Ministry of Land, Infrastructure and Transport
Subject
Electrical and Electronic Engineering,Mechanics of Materials,Condensed Matter Physics,General Materials Science,Atomic and Molecular Physics, and Optics,Civil and Structural Engineering,Signal Processing
Reference58 articles.
1. Past, present and future of robotic tunnel inspection;Montero;Autom. Constr.,2015
2. Fast crack detection method for large-size concrete surface images using percolation-based image processing;Yamaguchi;Mach. Vis. Appl.,2010
3. Image-based concrete crack detection in tunnels using deep fully convolutional networks;Ren;Constr. Build. Mater.,2020
4. Development of an inspection system for cracks in a concrete tunnel lining;Lee;Can. J. Civ. Eng.,2007
5. Review of deep convolution neural network in image classification;Al-Saffar;2017 International Conference on Radar, Antenna, Microwave, Electronics, and Telecommunications (ICRAMET),2017
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