Title of article :
THE EFFICIENCY OF THE ADAPTED AntClust ALGORITHM FOR SATELITE IMAGES CLUSTERING
Author/Authors :
BENYAMINA, Ahmed Bechar University - Faculty of Sciences and Technology, Algeria , FIZAZI, Hadria Université Mohamed Boudiaf (USTO University) - Faculty of Sciences and Technology, Algeria
Abstract :
This paper presents a novel algorithm for images satellite clustering using an adapted algorithm based on self-organization and the collective intelligence of ant colonies. The research aims to partition satellite images automatically by discovering the number of thematic classes in multispectral satellite images. Ants normally move in an array in one dimension and can carry objects. The attachment or removal of an object depends on a lot of similarity between this object and the heap objects. The probability that an ant takes the object is greater than leaving the object isolated. When an ant carries an image pixel, the probability that he deposits it as the element density of the same type in the neighbourhood is great. The experimental results of the AntClust adapted algorithm on satellite images can extract the correct class number.
Keywords :
image clustering , ant colonies , AntClust , AntClass , Satellite images , Ant clustering
Journal title :
Malaysian Journal of Computer Science
Journal title :
Malaysian Journal of Computer Science