Fuzzy Distributed Genetic Approaches for Image Segmentation

Abstract

This paper presents a new image segmentation algorithm (called FDGA-Seg) based on a combination of fuzzy logic, multiagent systems and genetic algorithms. We propose to use a fuzzy representation of the image site labels by introducing some imprecision in the gray tones values. The distributivity of FDGA-Seg comes from the fact that it is designed around a MultiAgent System (MAS) working with two different architectures based on the master-slave and island models. A rich set of experimental segmentation results given by FDGA-Seg is discussed and compared to the ICM results in the last section.

Extracted Key Phrases

13 Figures and Tables

Cite this paper

@article{Melkemi2010FuzzyDG, title={Fuzzy Distributed Genetic Approaches for Image Segmentation}, author={Kamal E. Melkemi and Sebti Foufou}, journal={CIT}, year={2010}, volume={18} }