Aluminum Profile Type Recognition Based on Texture Features

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Because aluminum profile’s structure is complex and diverse, we need to match the different parameters for different profiles before automated detection of surface defects of aluminum profile. This process often requires manual input, affecting the detection efficiency. To solve this problem, we analyze the characteristics of aluminum profile, through GLCM algorithm and Gabor wavelet transform methods, which are image texture feature extraction methods to get aluminum profile’s texture feature, then we use the Support Vector Machine (SVM) classification algorithm based on radial basis function (RBF) core classify the feature, for the aim of matching parameters automatically. By feature extraction time and the recognition accuracy rate and other indicators to compare the experimental results of each method, derived using Gabor wavelet transform is the best both on recognition accuracy or identify time effects, and can satisfy the actual needs.

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2846-2851

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May 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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[1] Liu li, Kuang Gangyao. Texture feature extraction methods Summary [J]. Chinese Journal of Image and Graphics, 2009, 14(4): 622-635.

Google Scholar

[2] Leen-Kiat Soh, Costas Tsatsoulis. Texture Analysis of SAR Sea Ice Imagery Using Gray Level Co-Occurrence Matrices. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, VOL. 37, NO. 2, MARCH (1999).

DOI: 10.1109/36.752194

Google Scholar

[3] Maher Arebey , M.A. Hannan , R.A. Begum , Hassan Basri. Solid waste bin level detection using gray level co-occurrence matrix feature extraction approach. Journal of Environmental Management 104 (2012) 9-18.

DOI: 10.1016/j.jenvman.2012.03.035

Google Scholar

[4] David A. Clausi, M. Ed Jernigan. A fast method to determine co-occurrence. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, VOL. 36, NO. 1, JANUARY (1998).

DOI: 10.1109/36.655338

Google Scholar

[5] L. Shen, S. Jia, Z. Ji, W. -S. Chen. Extracting local texture features for image-based coin recognition. IET Image Process, 2011, Vol. 5, Iss. 5, p.394–401.

DOI: 10.1049/iet-ipr.2009.0251

Google Scholar

[6] Meng Yang, Lei Zhang, Simon C.K. Shiu, David Zhang. Gabor feature based robust representation and classification for face recognition with Gabor occlusion dictionary. Pattern Recognition 46 (2013) 1865–1878.

DOI: 10.1016/j.patcog.2012.06.022

Google Scholar

[7] M.H. Rahman, M.R. Pickering, M.R. Frater and D. Kerr. Texture feature extraction method for scale and rotation invariant image retrieval. ELECTRONICS LETTERS 24th May 2012 Vol. 48 No. 11.

DOI: 10.1049/el.2012.0507

Google Scholar

[8] David A. Clausi, Huang Deng. Design-Based Texture Feature Fusion Using Gabor Filters and Co-Occurrence Probabilities. IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 14, NO. 7, JULY (2005).

DOI: 10.1109/tip.2005.849319

Google Scholar

[9] P. Howarth, S. Rϋger. Robust texture features for still-image retrieval. IEE Proc. -Vis. Image Signal Process., Vol. 152, No. 6, December (2005).

DOI: 10.1049/ip-vis:20045185

Google Scholar

[10] QIN Kaihuai, WANG Haiying, ZHENG Jitao. A Unified Approach Based on Hough Transform for Quick Detection of Circles and Rectangles. Journal of Image and Graphics. Vo. l 15, No. 1. Jan. (2010).

Google Scholar

[11] Mahesh Pal and Giles M. Foody. Evaluation of SVM, RVM and SMLR for Accurate Image Classification With Limited Ground Data. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, VOL. 5, NO. 5, OCTOBER 2012: 1344-1355.

DOI: 10.1109/jstars.2012.2215310

Google Scholar