(3.22.77.149)
Users online: 4548     
Ijournet
Email id
 

Year : 2016, Volume : 7, Issue : 1
First page : ( 53) Last page : ( 59)
Print ISSN : 2249-3212. Online ISSN : 0975-8089. Published online : 2016 April 1.
Article DOI : 10.5958/0975-8089.2016.00005.1

Enhancing CBIR Performance Using Evolutionary Algorithm-Assisted Significant Feature Selection: A Filter Approach

Karegowda Asha Gowda1,*, Bharathi PT1,**

1Department of Master of Computer Applications, Siddaganga Institute of Technology, Tumkur, Karnataka, India

*(Corresponding author) Email id: ashagksit@gmail.com

**bharathi2028@gmail.com

Abstract

Efficient searching becomes essential for large image archive, with more and more digital images available on Internet. Consequently, content-based image retrieval (CBIR) has drawn widespread research attentiveness in the last decade in the field of image processing, pattern recognition and computer vision. CBIR approach boils down to two core problems: feature extraction followed by feature matching. Feature selection is a process that selects pertinent features as a subset of original extracted features. This paper presents six filter approaches for significant features’ selection: decision tree, relief, genetic algorithm (GA) with correlation-based feature selection (CFS) as fitness function, particle swarm optimisation (PSO) with CFS as fitness function, exhaustive search and forward selection with CFS as attribute subset evaluator. Work is carried out on publicly available Corel data set images. Experimental results prove that the features selected from PSO and GA with CFS enhances CBIR performance both in terms of higher retrieval accuracy and reduced computational time.

Top

Keywords

CBIR, Feature selection, GLCM, Genetic algorithm, Particle swarm optimisation, Correlationbased feature selection.

Top

  
║ Site map ║ Privacy Policy ║ Copyright ║ Terms & Conditions ║ Page Rank Tool
750,940,140 visitor(s) since 30th May, 2005.
All rights reserved. Site designed and maintained by DIVA ENTERPRISES PVT. LTD..
Note: Please use Internet Explorer (6.0 or above). Some functionalities may not work in other browsers.