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Research articles

ScienceAsia 42S(2016): 34-41 |doi: 10.2306/scienceasia1513-1874.2016.42S.034


An evolutionary approach for optimizing content-based image retrieval using a support vector machine


T. Kanimozhi*, K. Latha

 
ABSTRACT:     One of the vital challenges in the field of image retrieval is the semantic gap between visual features and high-level semantic concepts. Various kinds of relevance feedback approaches have been developed to deal with this semantic gap. Of these, the support vector machine is important. The support vector machine relies upon its parameters and the number of feedback samples. This paper uses a Gaussian firefly algorithm along with support vector machine to raise the relevance feedback performance. The proposed approach determines the parameters of the support vector machine and increases the number of relevant feedback samples, thereby optimizing the retrieval process. The performance of the proposed approach is compared with other existing retrieval methods.

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Department of Computer Science and Engineering, University College of Engineering, BIT Campus, Tiruchirappalli 620024, Tamilnadu, India

* Corresponding author, E-mail: csrkani@gmail.com

Received 9 Mar 2016, Accepted 0 0000