Catalog Home Page

Content based image retrieval system with a combination of rough set and support vector machine

Shahabi Lotfabadi, M., Shiratuddin, M.F. and Wong, K.W. (2013) Content based image retrieval system with a combination of rough set and support vector machine. In: 9th Annual International Joint Conferences on Computer, Information, Systems Sciences, & Engineering (CISSE), 12 - 14 December

[img]
Preview

Abstract

In this paper, a classifier based on a combination of Rough Set and 1-v-1 (one-versus-one) Support Vector Machine for Content Based Image Retrieval system is presented. Some problems of 1-v-1 Support Vector Machine can be reduced using Rough Set. With Rough Set, a 1-v-1 Support Vector Machine can provide good results when dealing with incomplete and uncertain data and features. In addition, boundary region in Rough Set can reduce the error rate. Storage requirements are reduced when compared to the conventional 1-v-1 Support Vector Machine. This classifier has better semantic interpretation of the classification process. We compare our Content Based Image Retrieval system with other image retrieval systems that uses neural network, K-nearest neighbour and Support Vector Machine as the classifier in their methodology. Experiments are carried out using a standard Corel dataset to test the accuracy and robustness of the proposed system. The experiment results show the proposed method can retrieve images more efficiently than other methods in comparison.

Publication Type: Conference Paper
Murdoch Affiliation: School of Information Technology
Notes: Virtual conference
URI: http://researchrepository.murdoch.edu.au/id/eprint/22860
Item Control Page Item Control Page

Downloads

Downloads per month over past year