Pavement crack analysis by referring to historical crack data based on multi-scale localization.

Pavement crack analysis, which deals with crack detection and crack growth detection, is a crucial task for modern Pavement Management Systems (PMS). This paper proposed a novel approach that uses historical crack data as reference for automatic pavement crack analysis. At first, a multi-scale local...

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Main Authors: Xianglong Wang, Hu Zhaozheng, Na Li, Lingqiao Qin
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0235171
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spelling doaj-48c8a16b9ee3483ab359978ebf68e7872021-03-03T21:58:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01158e023517110.1371/journal.pone.0235171Pavement crack analysis by referring to historical crack data based on multi-scale localization.Xianglong WangHu ZhaozhengNa LiLingqiao QinPavement crack analysis, which deals with crack detection and crack growth detection, is a crucial task for modern Pavement Management Systems (PMS). This paper proposed a novel approach that uses historical crack data as reference for automatic pavement crack analysis. At first, a multi-scale localization method, which including GPS based coarse localization, image-level localization, and metric localization has been presented to establish image correspondences between historical and query crack images. Then historical crack pixels can be mapped onto the query crack image, and these mapped crack pixels are seen as high-quality seed points for crack analysis. Finally, crack analysis is accomplished by applying Region Growing Method (RGM) to further detect newly grown cracks. The proposed method has been tested with the actual pavement images collected in different time. The F-measure for crack growth is 88.9%, which demonstrates the proposed method has an ability to greatly simplify and enhances crack analysis result.https://doi.org/10.1371/journal.pone.0235171
collection DOAJ
language English
format Article
sources DOAJ
author Xianglong Wang
Hu Zhaozheng
Na Li
Lingqiao Qin
spellingShingle Xianglong Wang
Hu Zhaozheng
Na Li
Lingqiao Qin
Pavement crack analysis by referring to historical crack data based on multi-scale localization.
PLoS ONE
author_facet Xianglong Wang
Hu Zhaozheng
Na Li
Lingqiao Qin
author_sort Xianglong Wang
title Pavement crack analysis by referring to historical crack data based on multi-scale localization.
title_short Pavement crack analysis by referring to historical crack data based on multi-scale localization.
title_full Pavement crack analysis by referring to historical crack data based on multi-scale localization.
title_fullStr Pavement crack analysis by referring to historical crack data based on multi-scale localization.
title_full_unstemmed Pavement crack analysis by referring to historical crack data based on multi-scale localization.
title_sort pavement crack analysis by referring to historical crack data based on multi-scale localization.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Pavement crack analysis, which deals with crack detection and crack growth detection, is a crucial task for modern Pavement Management Systems (PMS). This paper proposed a novel approach that uses historical crack data as reference for automatic pavement crack analysis. At first, a multi-scale localization method, which including GPS based coarse localization, image-level localization, and metric localization has been presented to establish image correspondences between historical and query crack images. Then historical crack pixels can be mapped onto the query crack image, and these mapped crack pixels are seen as high-quality seed points for crack analysis. Finally, crack analysis is accomplished by applying Region Growing Method (RGM) to further detect newly grown cracks. The proposed method has been tested with the actual pavement images collected in different time. The F-measure for crack growth is 88.9%, which demonstrates the proposed method has an ability to greatly simplify and enhances crack analysis result.
url https://doi.org/10.1371/journal.pone.0235171
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AT huzhaozheng pavementcrackanalysisbyreferringtohistoricalcrackdatabasedonmultiscalelocalization
AT nali pavementcrackanalysisbyreferringtohistoricalcrackdatabasedonmultiscalelocalization
AT lingqiaoqin pavementcrackanalysisbyreferringtohistoricalcrackdatabasedonmultiscalelocalization
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