New Algorithm for Fractal Dimension Estimation based on Texture Measurements: Application on Breast Tissue Characterization

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Author(s)

Kamila Khemis 1,* Sihem A. Lazzouni 1 Mahammed Messadi 1 Salim Loudjedi 2 Bessaid Abdelhafid 1

1. Biomedical Engineering laboratory, Tlemcen University, 13000, Algeria

2. Department of Medecine, Tlemcen University, 13000, Algeria

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2016.04.02

Received: 4 Jan. 2016 / Revised: 9 Feb. 2016 / Accepted: 10 Mar. 2016 / Published: 8 Apr. 2016

Index Terms

Fractal, Texture, Gray Level Co occurrence Matrix, Mammography, Classification, Support Vector Machine

Abstract

Fractal analysis is currently in full swing in particular in the medical field because of the fractal nature of natural phenomena (vascular system, nervous system, bones, breast tissue ...). For this, many algorithms for estimating the fractal dimension have emerged. Most of them are based on the principle of box counting. In this work we propose a new method for calculating fractal attributes based on contrast homogeneity and energy that have been extracted from gray level co-occurrence matrix. As application we are investigated in the characterization and classification of mammographic images with SuportVectorMachine classifier. We considered in particular images with tumor masses and architectural disorder to compare with normal ones. We calculate, for comparison the fractal dimension obtained by a reference method (triangular prism) and perform a classification similar to the previous. Results obtained with new algorithm are better than reference method (classification rate is 0.91 vs 0.65). Hence new fractal attributes are relevant. 

Cite This Paper

Kamila Khemis, Sihem A. Lazzouni, Mahammed Messadi, Salim Loudjedi, Abdelhafid Bessaid,"New Algorithm for Fractal Dimension Estimation based on Texture Measurements: Application on Breast Tissue Characterization", International Journal of Image, Graphics and Signal Processing(IJIGSP), Vol.8, No.4, pp.9-15, 2016. DOI: 10.5815/ijigsp.2016.04.02

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