Advanced Algorithm for Brain Segmentation using Fuzzy to Localize Cancer and Epilespy Region
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Date
2010
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Abstract
The research which addresses the diseases of the brain in the field of the vision by computer is one of the challenges in recent times in medicine, the engineers and researchers recently launched challenges to carry out innovations of technology pointed in imagery. This paper focuses on a new algorithm for brain segmentation of color images based on fuzzy classification to diagnose accurately the region of cancer and the area of epilepsy. In a first step it proceeds by a fine segmentation using the algorithm of fuzzy cmeans (FCM). It then applies a test fusion of fuzzy classes. The result is a coarse segmentation, where each region is the union of elementary regions grown from FCM. The fuzzy C-Means (FCM) clustering is an iterative partitioning method that produces optimal c-partitions. The standard FCM algorithm takes a long time to partition a large data set. The proposed FCM program must read the entire data set into a memory for processing. Our results show that the system performance is robust to different types of images.
Description
Keywords
Bain Segmentation, Classification, FCM, Merge regions, Epilespy Optimal c-partitions.
Citation
M. L. Toure, Z. Beiji, F. Musau and A. D. Camara. (2010). Advanced Algorithm for Brain Segmentation using Fuzzy to Localize Cancer and Epilepsy Region. International Conference on Electronics and Information Engineering. pp. V2-488-V2-492, doi: 10.1109/ICEIE.2010.5559761.