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      Automatic Crack Detection and Classification Method for Subway Tunnel Safety Monitoring

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          Abstract

          Cracks are an important indicator reflecting the safety status of infrastructures. This paper presents an automatic crack detection and classification methodology for subway tunnel safety monitoring. With the application of high-speed complementary metal-oxide-semiconductor (CMOS) industrial cameras, the tunnel surface can be captured and stored in digital images. In a next step, the local dark regions with potential crack defects are segmented from the original gray-scale images by utilizing morphological image processing techniques and thresholding operations. In the feature extraction process, we present a distance histogram based shape descriptor that effectively describes the spatial shape difference between cracks and other irrelevant objects. Along with other features, the classification results successfully remove over 90% misidentified objects. Also, compared with the original gray-scale images, over 90% of the crack length is preserved in the last output binary images. The proposed approach was tested on the safety monitoring for Beijing Subway Line 1. The experimental results revealed the rules of parameter settings and also proved that the proposed approach is effective and efficient for automatic crack detection and classification.

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          Extreme learning machine: Theory and applications

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            A threshold selection method from gray-level histograms

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              Adaptive Road Crack Detection System by Pavement Classification

              This paper presents a road distress detection system involving the phases needed to properly deal with fully automatic road distress assessment. A vehicle equipped with line scan cameras, laser illumination and acquisition HW-SW is used to storage the digital images that will be further processed to identify road cracks. Pre-processing is firstly carried out to both smooth the texture and enhance the linear features. Non-crack features detection is then applied to mask areas of the images with joints, sealed cracks and white painting, that usually generate false positive cracking. A seed-based approach is proposed to deal with road crack detection, combining Multiple Directional Non-Minimum Suppression (MDNMS) with a symmetry check. Seeds are linked by computing the paths with the lowest cost that meet the symmetry restrictions. The whole detection process involves the use of several parameters. A correct setting becomes essential to get optimal results without manual intervention. A fully automatic approach by means of a linear SVM-based classifier ensemble able to distinguish between up to 10 different types of pavement that appear in the Spanish roads is proposed. The optimal feature vector includes different texture-based features. The parameters are then tuned depending on the output provided by the classifier. Regarding non-crack features detection, results show that the introduction of such module reduces the impact of false positives due to non-crack features up to a factor of 2. In addition, the observed performance of the crack detection system is significantly boosted by adapting the parameters to the type of pavement.
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                Author and article information

                Journal
                Sensors (Basel)
                Sensors (Basel)
                Sensors (Basel, Switzerland)
                MDPI
                1424-8220
                October 2014
                16 October 2014
                : 14
                : 10
                : 19307-19328
                Affiliations
                School of Electronic and Information Engineering, Key Laboratory of Communication and Information Systems, Beijing Municipal Commission of Education, Beijing Jiaotong University, Beijing 100044, China; E-Mails: 13120179@ 123456bjtu.edu.cn (W.Z.); 13120112@ 123456bjtu.edu.cn (D.Q.); liuyun@ 123456bjtu.edu.cn (Y.L.)
                Author notes

                External Editor: Vittorio M.N. Passaro

                [* ]Author to whom correspondence should be addressed; E-Mail: zhjzhangl@ 123456bjtu.edu.cn ; Tel/Fax: +86-10-5168-4227.
                Article
                sensors-14-19307
                10.3390/s141019307
                4239952
                25325337
                cdba9254-a02c-4f72-a08c-53406ab3b23d
                © 2014 by the authors; licensee MDPI, Basel, Switzerland.

                This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 13 June 2014
                : 20 August 2014
                : 03 October 2014
                Categories
                Article

                Biomedical engineering
                crack detection,crack classification,subway tunnel,line scan cameras
                Biomedical engineering
                crack detection, crack classification, subway tunnel, line scan cameras

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