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The local binary pattern (LBP) is a gray-scale and rotation invariant operator, and has been proved to be theoretically very simple, yet computational efficient approach for texture classification. As for the irregular texture surface image, like pavement surface image, the original LBP performs not good enough for practical purposes. First, threshold in plain area often cause mismatch in local structure. Second, nonuniform patterns were directly merged into one pattern will discards large amount of texture information represented by these patterns. In this paper, a novel LBP based operator for pavement crack detection is proposed. In our approach, local neighbors are classified into smooth area and rough area, segmentation only performed in rough area to catch local structure information. And then, local patterns are regrouped and a lookup table is created for fast implement. With these methods, the proposed approach detects cracks well and becomes more robust against noise. Experiments on the pavement surface image show the good performance of this new LBP based operator. More importantly, because of its simplicity, online implementation is possible as well.
Wydawca
Czasopismo
Rocznik
Tom
Strony
5--12
Opis fizyczny
Bibliogr. 14 poz., rys.
Twórcy
autor
autor
- University of Science & Technology, 200 Xiaolingwei Street, Nanjing, Jiangsu 210094, China, ddwant@tom.com
Bibliografia
- [1] J. Bray, Brijesh Verma, Xue Li, and Wade He, A Neural Network Based Technique for Automatic Classification of Road Cracks, International Joint Conference on Neural Networks, pp. 907-912, 2006
- [2] H.D. Cheng, J.R. Chen, C. Glazier, and Y.G. Hu, Novel approach to pavement cracking detection based on fuzzy set theory, Journal of Computing in Civil Engineering, Vol.13 No.3, pp. 270-280, October, 1999
- [3] H.D. Cheng, J.L. Wang, Y.G. Hu, C. Glazier, X.J. Shi, and X.W. Chen, Novel Approach to Pavement Cracking Detection Based on Neural Network, Transportation Research Record, vol. 1764, pp. 119-127, 2001
- [4] Y. Huang, Bugao Xu, Automatic inspection of pavement cracking distress, Journal of Electronic Imaging, Vol. 013017-1 15(1), 2006
- [5] L. Tang, Ch. Zhao, H. Wang, Y. Hu, Detection and Classification of Pavement Surface Cracks Based on Image Analysis, Journal of Engineering Graphics, vol. 8, pp. 99 - 104, 2008
- [6] P. Subirats, J. Dumoulin, V. Legeay and D. Barba, Automation of Pavement Surface Crack Detection Using the Continuous Wavelet Transform, IEEE Intemational Conference on Image Processing, pp. 3037-3040, 2006
- [7] T. Tomikawa, A study of road crack detection by the meta-genetic algorithm, AFRICON, IEEE, pp. 543-548, 1999
- [8] H.G. Zhang, Q. Wang, Use of Artificial Living System for Pavement Distress Survey, Industrial Electronics Society, 30th Annual Conference of IEEE, vol. 3, pp. 2486-2490, 2004
- [9] J. Zhou, P. S. Huang, Fu-Pen Chiang, Wavelet-based pavement distress detection and evaluation, Optical Engineering, Vol. 45(2), 027007, February 2006
- [10] T. Ojala, M. Pietikainen, T. Maenpaa, Multiresolution gray-scale and rotation invariant texture classification with local binary patterns, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 24, no. 7, pp. 971-987, 2002
- [11] Zhao Chun Xia, Tang Zhen Min, Yang Jing Yu, He An Zhi, N-l Style Intelligent Data Gathering and Processing System for Pavement Surface Detecting, Intelligent Transportation Systems, Proceedings, pp. 1556-1558, 2003
- [12] F. Tajeripour, E. Kabir, A. Sheikhi, Fabric Defect Detection Using Modified Local Binary Patterns, EURASIP Journal on Advances in Signal Processing, , Article ID 783898, 12 pages, Volume 2008
- [13] M. Pietikainen, T. Ahonen, A. Hadid, Face description with local binary patterns: application to face recognition, IEEE Transactions on Pattern Analysis and Machine Intelligence, 28(12): 2037-2041, 2006
- [14] Hui Zhou, Runsheng Wang, Cheng Wang, A novel extended local-binary-pattern operator for texture analysis, Information Sciences, vol. 178, pp. 4314-4325, 2000
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BAT5-0045-0009