Automatic fuzzy genetic algorithm in clustering for images based on the extracted intervals

Master'sPham Toan DinhTai Vovan

Faculty of Engineering

Research output: Article

researchs.abstract

This research proposes the method to extract the characteristics of images to become the intervals. These intervals are used to build the automatic fuzzy genetic algorithm for images (AFGI). In the proposed model, the overlap measure is the criterion to evaluate the closeness of intervals, and the new Davies and Bouldin index is the objective function. The AFGI can determine the proper number of clusters, the images in each cluster, and the probability to belong to clusters of images at the same time. The experiments with different types of images illustrate the steps of AFGI, and show its significant benefit in comparing to other algorithms.

Overview
Type
Article
Publication year
13 Oct 2020
Original language
English
Published Journal
Multimedia Tools and Applications
Classification
Scopus Indexed
ISSN index
1380-7501
Quartiles
Q1

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