Automatic Pavement Crack Recognition Based on BP Neural Network

A feasible pavement crack detection system plays an important role in evaluating the road condition and providing the necessary road maintenance. In this paper, a back propagation neural network (BPNN) is used to recognize pavement cracks from images. To improve the recognition accuracy of the BPNN,...

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Main Authors: Li Li, Lijun Sun, Guobao Ning, Shengguang Tan
Format: Article
Language:English
Published: University of Zagreb, Faculty of Transport and Traffic Sciences 2014-02-01
Series:Promet (Zagreb)
Subjects:
Online Access:http://www.fpz.unizg.hr/traffic/index.php/PROMTT/article/view/1477
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spelling doaj-868ad3a7fc924a3e8a29a538339524d62020-11-25T00:33:50ZengUniversity of Zagreb, Faculty of Transport and Traffic SciencesPromet (Zagreb)0353-53201848-40692014-02-01261112210.7307/ptt.v26i1.14771115Automatic Pavement Crack Recognition Based on BP Neural NetworkLi Li0Lijun Sun1Guobao Ning2Shengguang Tan31. Key Laboratory of Road and Traffic Engineering of the Ministry of Education, Tongji University Shanghai 201804, China 2. Jiangxi Ganyue Expressway Co., Ltd Nanchang 330025, ChinaKey Laboratory of Road and Traffic Engineering of the Ministry of Education, Tongji University Shanghai 201804, ChinaSchool of Automotive Studies Tongji University Shanghai 201804, ChinaJiangxi Ganyue Expressway Co., Ltd Nanchang 330025, ChinaA feasible pavement crack detection system plays an important role in evaluating the road condition and providing the necessary road maintenance. In this paper, a back propagation neural network (BPNN) is used to recognize pavement cracks from images. To improve the recognition accuracy of the BPNN, a complete framework of image processing is proposed including image preprocessing and crack information extraction. In this framework, the redundant image information is reduced as much as possible and two sets of feature parameters are constructed to classify the crack images. Then a BPNN is adopted to distinguish pavement images between linear and alligator cracks to acquire high recognition accuracy. Besides, the linear cracks can be further classified into transversal and longitudinal cracks according to the direction angle. Finally, the proposed method is evaluated on the data of 400 pavement images obtained by the Automatic Road Analyzer (ARAN) in Northern China and the results show that the proposed method seems to be a powerful tool for pavement crack recognition. The rates of correct classification for alligator, transversal and longitudinal cracks are 97.5%, 100% and 88.0%, respectively. Compared to some previous studies, the method proposed in this paper is effective for all three kinds of cracks and the results are also acceptable for engineering application.http://www.fpz.unizg.hr/traffic/index.php/PROMTT/article/view/1477crack detectionbackground correctionimage processingimage recognitionBP neural network
collection DOAJ
language English
format Article
sources DOAJ
author Li Li
Lijun Sun
Guobao Ning
Shengguang Tan
spellingShingle Li Li
Lijun Sun
Guobao Ning
Shengguang Tan
Automatic Pavement Crack Recognition Based on BP Neural Network
Promet (Zagreb)
crack detection
background correction
image processing
image recognition
BP neural network
author_facet Li Li
Lijun Sun
Guobao Ning
Shengguang Tan
author_sort Li Li
title Automatic Pavement Crack Recognition Based on BP Neural Network
title_short Automatic Pavement Crack Recognition Based on BP Neural Network
title_full Automatic Pavement Crack Recognition Based on BP Neural Network
title_fullStr Automatic Pavement Crack Recognition Based on BP Neural Network
title_full_unstemmed Automatic Pavement Crack Recognition Based on BP Neural Network
title_sort automatic pavement crack recognition based on bp neural network
publisher University of Zagreb, Faculty of Transport and Traffic Sciences
series Promet (Zagreb)
issn 0353-5320
1848-4069
publishDate 2014-02-01
description A feasible pavement crack detection system plays an important role in evaluating the road condition and providing the necessary road maintenance. In this paper, a back propagation neural network (BPNN) is used to recognize pavement cracks from images. To improve the recognition accuracy of the BPNN, a complete framework of image processing is proposed including image preprocessing and crack information extraction. In this framework, the redundant image information is reduced as much as possible and two sets of feature parameters are constructed to classify the crack images. Then a BPNN is adopted to distinguish pavement images between linear and alligator cracks to acquire high recognition accuracy. Besides, the linear cracks can be further classified into transversal and longitudinal cracks according to the direction angle. Finally, the proposed method is evaluated on the data of 400 pavement images obtained by the Automatic Road Analyzer (ARAN) in Northern China and the results show that the proposed method seems to be a powerful tool for pavement crack recognition. The rates of correct classification for alligator, transversal and longitudinal cracks are 97.5%, 100% and 88.0%, respectively. Compared to some previous studies, the method proposed in this paper is effective for all three kinds of cracks and the results are also acceptable for engineering application.
topic crack detection
background correction
image processing
image recognition
BP neural network
url http://www.fpz.unizg.hr/traffic/index.php/PROMTT/article/view/1477
work_keys_str_mv AT lili automaticpavementcrackrecognitionbasedonbpneuralnetwork
AT lijunsun automaticpavementcrackrecognitionbasedonbpneuralnetwork
AT guobaoning automaticpavementcrackrecognitionbasedonbpneuralnetwork
AT shengguangtan automaticpavementcrackrecognitionbasedonbpneuralnetwork
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