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Defect-detection model for underground parking lots using image object-detection methodoa mark
  • Shin, Hyun Kyu ;
  • Lee, Si Woon ;
  • Hong, Goo Pyo ;
  • Sael, Lee ;
  • Lee, Sang Hyo ;
  • Kim, Ha Young
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Publication Year
2020-01-01
Publisher
Tech Science Press
Citation
Computers, Materials and Continua, Vol.66, pp.2493-2507
Keyword
Concrete structuresDeep learningDefect detectionFaster R-CNN
Mesh Keyword
Defect detection algorithmImage object detectionInspection methodsLong-term perspectiveObject detection methodRegions of interestUnderground parking lotsVisual inspection method
All Science Classification Codes (ASJC)
BiomaterialsModeling and SimulationMechanics of MaterialsComputer Science ApplicationsElectrical and Electronic Engineering
Abstract
The demand for defect diagnoses is gradually gaining ground owing to the growing necessity to implement safe inspection methods to ensure the durability and quality of structures. However, conventional manpower-based inspection methods not only incur considerable cost and time, but also cause frequent disputes regarding defects owing to poor inspections. Therefore, the demand for an effective and efficient defect-diagnosis model for concrete structures is imminent, as the reduction in maintenance costs is significant from a long-term perspective. Thus, this paper proposes a deep learning-based image object-identification method to detect the defects of paint peeling, leakage peeling, and leakage traces that mostly occur in underground parking lots made of concrete structures. The deep learning-based object-detection method can replace conventional visual inspection methods. A faster region-based convolutional neural network (R-CNN) model was used with a training dataset of 6,281 images that utilized a region proposal network to objectively localize the regions of interest and detect the surface defects. The defects were classified according to their type, and the learning of each exclusive model was ensured through test sets obtained from real underground parking lots. As a result, average precision scores of 37.76%, 36.42%, and 61.29% were obtained for paint peeling, leakage peeling, and leakage trace defects, respectively. Thus, this study verified the performance of the faster RCNN-based defect-detection algorithm along with its applicability to underground parking lots.
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/31752
DOI
https://doi.org/10.32604/cmc.2021.014170
Fulltext

Type
Article
Funding
Funding Statement: This research was supported by a grant (19CTAP-C152020-01) from Technology Advancement Research Program (TARP) funded by the Ministry of Land, Infrastructure and Transport of the Korean government.Acknowledgement: The authors would like to thank the Ministry of Land, Infrastructure and Transport of the Korean government for funding this research project.
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