Paper Title

Use of Content Based Image Retrieval System for Similarity Analysis of Images

Authors

  • Dipalee J. Fendarkar

Keywords

Content Analysis and Indexing, Indexing methods, Digital Images, Image Descriptors, K-means algorithm, Image Database.

Abstract

- This paper is based on the development of content based image retrieval system (CBIR) and sketch based image retrieval system (SBIR). The aim of CBIR is to extract visual features and display the relevant images. This paper introduces the presents problems and challenges concerned with the design and the creation of CBIR systems, which is based on a free hand sketch (i.e. SBIR). The use of the existing methods, describe a possible results, how to search a number of images and implement a task specific descriptor, which can handle the informational gap between a sketch a colored image to make an opportunity for the efficient search. The CBIR system computes the similarity between the query and the images stored in the database. This paper introduces and presents the result of primitive features of images like textures, colors and shapes. The description of feature extraction, feature based matching and indexing which represent the base of retrieving images and it allows the comparison of database images with queries containing various levels of detail and similarity analysis of image, representation of the database images and also introduced the creation of the mosaic of the images and compared the methods of matching sketches descriptor. This result paper is focus on retrieval of images based on the visual content of the input (query) object, which demands on the quite wide methodology variety on the area of the Image Processing.

Article Type

Published

How To Cite

Dipalee J. Fendarkar. "Use of Content Based Image Retrieval System for Similarity Analysis of Images".INTERNATIONAL JOURNAL OF ENGINEERING DEVELOPMENT AND RESEARCH ISSN:2321-9939, Vol.3, Issue 3, pp., URL :https://rjwave.org/ijedr/papers/IJEDR1503051.pdf

Issue

Volume 3 Issue 3 

Pages.

Article Preview