Performance Evaluation of Content Based Image Retrieval on Feature Optimization and Selection Using Swarm Intelligence

Abstract

The diversity and applicability of swarm intelligence is increasing everyday in the fields of science and engineering. Swarm intelligence gives the features of the dynamic features optimization concept. We have used swarm intelligence for the process of feature optimization and feature selection for content-based image retrieval. The performance of content-based image retrieval faced the problem of precision and recall. The value of precision and recall depends on the retrieval capacity of the image. The basic raw image content has visual features such as color, texture, shape and size. The partial feature extraction technique is based on geometric invariant function. Three swarm intelligence algorithms were used for the optimization of features: ant colony optimization, particle swarm optimization (PSO), and glowworm optimization algorithm. Coral image dataset and MatLab software were used for evaluating performance.

Authors and Affiliations

Kirti Jain, Dr. Sarita Bhadauria

Keywords

Related Articles

Comparative Analysis of ALU Implementation with RCA and Sklansky Adders In ASIC Design Flow

An Arithmetic Logic Unit (ALU) is the heart of every central processing unit (CPU) which performs basic operations like addition, subtraction, multiplication, division and bitwise logic operations on binary numbers. This...

Empirical Performance Analysis of Decision Tree and Support Vector Machine based Classifiers on Biological Databases

The classification and prediction of medical diseases is a cutting edge research problem in the medical field. The experts of machine learning are continuously proposing new classification methods for the prediction of d...

Analyzing Distributed Generation Impact on the Reliability of Electric Distribution Network

With proliferation of Distribution Generation (DG) and renewable energy technologies the power system is becoming more complex, with passage of time the development of distributed generation technologies is becoming dive...

Exon_Intron Separation Using Amino Acids Groups Frenquency Repartition as Coding Technique

This paper presents a new coding technique based on amino acids repartition in chromosome. The signal generated with this coding technique constitutes, after treatment, a new way to separate between exons and introns in...

A Load Balancing Policy for Heterogeneous Computational Grids

Computational grids have the potential computing power for solving large-scale scientific computing applications. To improve the global throughput of these applications, workload has to be evenly distributed among the av...

Download PDF file
  • EP ID EP90599
  • DOI 10.14569/IJACSA.2016.070335
  • Views 95
  • Downloads 0

How To Cite

Kirti Jain, Dr. Sarita Bhadauria (2016). Performance Evaluation of Content Based Image Retrieval on Feature Optimization and Selection Using Swarm Intelligence. International Journal of Advanced Computer Science & Applications, 7(3), 245-249. https://europub.co.uk/articles/-A-90599