A Multiresolution Approach for Noised Texture Classification based on the Co-occurrence Matrix and First Order Statistics
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A Multiresolution Approach for Noised Texture Classification based on the Co-occurrence Matrix and First Order Statistics

Authors: M. Ben Othmen, M. Sayadi, F. Fnaiech

Abstract:

Wavelet transform provides several important characteristics which can be used in a texture analysis and classification. In this work, an efficient texture classification method, which combines concepts from wavelet and co-occurrence matrices, is presented. An Euclidian distance classifier is used to evaluate the various methods of classification. A comparative study is essential to determine the ideal method. Using this conjecture, we developed a novel feature set for texture classification and demonstrate its effectiveness

Keywords: Classification, Wavelet, Co-occurrence, Euclidian Distance, Classifier, Texture.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1059561

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[1] P. Brodatz, "Textures: A photographic Album for Artist and Designers", Dover, New York, 1956.
[2] A.Ertuzun, A.Erçil, "An efficient method for texture defect detection: sub-band domain co-occurrence matices", Image and vision Computing 18 (2000) 543-553.
[3] Ahmet Latif Amet, Aysin Ertüzün, Aytül Erçil, "An efficient method for texture defect detection: Subband domain co-occurrence matrices" Department of Electrical-Electronics Engineering, department of Industrial Engineering, Bogaziçi University.
[4] C.Germain, "Contribution ├á la caractérisation multi- échelle de l'anisotropie des images texturées ", Thèse de Doctorat, Universités de Bordeaux I, Décembre 1997.
[5] Sahbani Mahersia Hela, Hamrouni Kamel,"Segmentation d-images texturées par transformées en ondelettes et classification C-moyenne floue," International conference :Sciences of Electronic,Technologies of information and Telecommunications SETIT 2005 Mars, 2005.
[6] Kechida Ahmed, Drai Redouane et Khelil Mohamed, "Analyse de texture et segmentation par la transformée en ondelettes des images Ultrasonores du types T.O.F.D." International Conference SETIT, Mars, 2005, Sousse, Tunisia.
[7] C.M.Pun, M.C.Lee, "Extraction of shift Invariant wavelet features for classification of images with differntes sizes", IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 26, no. 9, pp 1228-1223, September 2004.
[8] M.Mjahed, "Analyse neuronale d'attributs morphologiques d'images", Conférence JTEA 2000, pages 89-96, Nabeul- Hammamet, Tunisie.
[9] J.G.Postaire "De l'image ├á la décision:analyse des images numériques et théorie de la décision", Edition DUNOD, 1987.
[10] Materka, M. Strzelecki, " Texture Analysis Methods - A Review", Technical University of Lodz, Institute of Electronics, COST B11 report, Brussels 1998.
[11] M. Hadhoud, D W. Thomas. "The Two-dimensional adaptive LMS (TDLMS) algorithm" IEEE Transactions on Circuits and Systems, vol. 35, no. 5, pp 485-493, May 1988.
[12] G. VandeWouwer, P. Scheunders and Van Dyck, "Statistical texture characterisation from discrete wavelet representation", IEEE Transactions on Image Processing, vol. 8, no. 4, pp 592-598, April 1999.
[13] B. Kara, N. Watsuji," Using wavelets for texture classification", IJCI Processing of International Conference on Signal Processing, Vol.1, No 2., pp 159-162, September 2003.
[14] Xudong Zhang, "Wavelet domain hyperspectral soil texture classification", Doctorate thesis, Department of Electrical and Computer Engineering, May 2004.
[15] M. S. Lew, N. Sebe "Wavelet based texture classification, "IEEE Transactions on image processing, vol. 3, no. 4, pp 947-950, April 2000.
[16] M. Mjahed, "Analyse neuronale d'attributs morphologiques d'images, " article publié JTEA 2000 Tome1 pages 89-96 Nabeul- Hammamet, Tunisie.
[17] E. Petitt, G. Loum, P. Provent, J. Lemoine, " A new method for texture classification based on wavelet transform, " IEEE Transactions on image processing, vol. 26, no. 8, pp 432-439, April 1999.
[18] J. G. Postaire, " De l'image ├á la décision:analyse des images numériques et théorie de la décision, " DUNOD -1987.
[19] E. M. Rikxoort, "Texture analysis," Graduate research proposal in AI.
[20] Mme K. Roméo, M. Benatia Belhacen, Mr E. Baarir, " Analyse statistiques des textures, " Novembre 1997.