Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database

As a common disease of concrete structure in engineering, cracks mainly lead to durability problems such as steel corrosion, rain erosion, and protection layer peeling, and then the building gets destroyed. In order to detect the cracks of concrete structure in time, the bending test of steel fiber...

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Main Authors: Yang Ding, Shuang-Xi Zhou, Hai-Qiang Yuan, Yuan Pan, Jing-Liang Dong, Zhong-Ping Wang, Tong-Lin Yang, An-Ming She
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Advances in Materials Science and Engineering
Online Access:http://dx.doi.org/10.1155/2021/9934250
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author Yang Ding
Shuang-Xi Zhou
Hai-Qiang Yuan
Yuan Pan
Jing-Liang Dong
Zhong-Ping Wang
Tong-Lin Yang
An-Ming She
author_facet Yang Ding
Shuang-Xi Zhou
Hai-Qiang Yuan
Yuan Pan
Jing-Liang Dong
Zhong-Ping Wang
Tong-Lin Yang
An-Ming She
author_sort Yang Ding
collection DOAJ
description As a common disease of concrete structure in engineering, cracks mainly lead to durability problems such as steel corrosion, rain erosion, and protection layer peeling, and then the building gets destroyed. In order to detect the cracks of concrete structure in time, the bending test of steel fiber reinforced concrete is carried out, and the pictures of concrete cracks are obtained. Furthermore, the crack database is expanded by the migration learning method and the crack database is shared on the Baidu online disk. Finally, a concrete crack identification model based on YOLOv4 and Mask R-CNN is established. In addition, the improved Mask R-CNN method is proposed in order to improve the prediction accuracy based on the Mask R-CNN. The results show that the average prediction accuracy of concrete crack identification is 82.60% based on the YOLO v4 method. The average prediction accuracy of concrete crack identification is 90.44% based on the Mask R-CNN method. The average prediction accuracy of concrete crack identification is 96.09% based on the improved Mask R-CNN method.
format Article
id doaj-art-1ade0327391345a9a0e5d7b618c752a4
institution Kabale University
issn 1687-8434
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language English
publishDate 2021-01-01
publisher Wiley
record_format Article
series Advances in Materials Science and Engineering
spelling doaj-art-1ade0327391345a9a0e5d7b618c752a42025-02-03T01:24:46ZengWileyAdvances in Materials Science and Engineering1687-84341687-84422021-01-01202110.1155/2021/99342509934250Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack DatabaseYang Ding0Shuang-Xi Zhou1Hai-Qiang Yuan2Yuan Pan3Jing-Liang Dong4Zhong-Ping Wang5Tong-Lin Yang6An-Ming She7Key Laboratory of Advanced Civil Engineering Materials of Ministry of Education, Tongji University, Shanghai 201804, ChinaSchool of Civil Engineering and Architecture, East China Jiao Tong University, Nanchang 330013, ChinaSchool of Civil Engineering and Architecture, East China Jiao Tong University, Nanchang 330013, ChinaSchool of Civil Engineering and Architecture, East China Jiao Tong University, Nanchang 330013, ChinaSchool of Civil Engineering and Architecture, East China Jiao Tong University, Nanchang 330013, ChinaKey Laboratory of Advanced Civil Engineering Materials of Ministry of Education, Tongji University, Shanghai 201804, ChinaCollege of Chemistry and Chemical Engineering, Hunan University, Changsha 410082, ChinaKey Laboratory of Advanced Civil Engineering Materials of Ministry of Education, Tongji University, Shanghai 201804, ChinaAs a common disease of concrete structure in engineering, cracks mainly lead to durability problems such as steel corrosion, rain erosion, and protection layer peeling, and then the building gets destroyed. In order to detect the cracks of concrete structure in time, the bending test of steel fiber reinforced concrete is carried out, and the pictures of concrete cracks are obtained. Furthermore, the crack database is expanded by the migration learning method and the crack database is shared on the Baidu online disk. Finally, a concrete crack identification model based on YOLOv4 and Mask R-CNN is established. In addition, the improved Mask R-CNN method is proposed in order to improve the prediction accuracy based on the Mask R-CNN. The results show that the average prediction accuracy of concrete crack identification is 82.60% based on the YOLO v4 method. The average prediction accuracy of concrete crack identification is 90.44% based on the Mask R-CNN method. The average prediction accuracy of concrete crack identification is 96.09% based on the improved Mask R-CNN method.http://dx.doi.org/10.1155/2021/9934250
spellingShingle Yang Ding
Shuang-Xi Zhou
Hai-Qiang Yuan
Yuan Pan
Jing-Liang Dong
Zhong-Ping Wang
Tong-Lin Yang
An-Ming She
Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database
Advances in Materials Science and Engineering
title Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database
title_full Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database
title_fullStr Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database
title_full_unstemmed Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database
title_short Crack Identification Method of Steel Fiber Reinforced Concrete Based on Deep Learning: A Comparative Study and Shared Crack Database
title_sort crack identification method of steel fiber reinforced concrete based on deep learning a comparative study and shared crack database
url http://dx.doi.org/10.1155/2021/9934250
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