A Robust Model using SIFT and Gamma Mixture Model for Texture Images Classification: Perspectives for Medical Applications
Said Benlakhdar1*, Mohammed Rziza1 and Rachid Oulad Haj Thami2

1LRIT URAC 29, Faculty of Sciences, Mohammed V University in Rabat, Morocco.

2RIITM, ENSIAS, Mohammed V University in Rabat, Morocco.

Corresponding Author E-mail: said-benlakhdar@um5s.net.ma

Abstract: The texture analysis of medical images is a powerful calculation tool for the discrimination between pathological and healthy tissue in different organs in medical images. Our paper proposes a novel approach named, GGD-GMM, based on statistical modeling in wavelet domain to describe texture images. Firstly, we propose a robust algorithm based on the combination of the wavelet transform and Scale Invariant Feature Transform (SIFT). Secondly, we implement the aforementioned algorithm and fit the result by using the finite Gamma Mixture Model (GMM). The results, obtained for two benchmark datasets, show that our proposed algorithm has a good relevance as it provides higher classification accuracy compared to some other well known models. Moreover, it displays others advantages relied to Noise-resistant and rotation invariant. Our algorithm could be useful for the analysis of several medical issues.

Keywords: Classification; Gamma Mixture Model; Statistical image modeling; SIFT; Uniform Discrete Curvelet Transform

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