An overview of Image Retrieval Systems using Relevance Feedback Method

International Journal of Computer Science (IJCS Journal) Published by SK Research Group of Companies (SKRGC) Scholarly Peer Reviewed Research Journals

Format: Volume 4, Issue 2, No 1, 2016.

Copyright: All Rights Reserved ©2016

Year of Publication: 2016

Author: Dr.J.Jeya Chitra

Reference:IJCS-118

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Abstract

The rapid development in the field of image processing system, image retrieval is the main thing to retrieve the desire method. During the past decades image data have been permanently increased leading to huge repositories. Now a day, numerous feature extraction methods have been processed to improve the quality of content-based image retrieval and image classification systems. In this paper, we are analyzing the technique of Relevance Feedback method for the purpose of image retrieval system. This overview offers a very useful study to all the methods used for color image retrieval system. The main aim of this paper is to develop a functional retrieval system which can be used in a wide variety of image retrieval applications.

References

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Keywords

Image Retrieval system, Relevance Feedback method, Feature extraction, Image Processing.

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