High Impact Factor : 4.396 icon | Submit Manuscript Online icon |

Content-based Image Retrieval by Information Theoretic Measure

Author(s):

Varsha Tripathi , maharaja agrasen institute of technology

Keywords:

Image Retrieval, Fuzzy Features, Descriptors, Entropy, Indexing

Abstract

Content-based image retrieval focuses on intuitive and efficient methods for retrieving images from databases based on the content of the images. A new entropy function that serves as a measure of information content in an image termed as ‘an information theoretic measure’ is devised in this paper. Among the various query paradigms, query by example (QBE) is adopted to set a query image for retrieval from a large image database. In this paper, colour and texture features are extracted using the new entropy function and the dominant colour is considered as a visual feature for a particular set of images. Thus colour and texture features constitute the two-dimensional feature vector for indexing the images. The low dimensionality of the feature vector speeds up the atomic query. Indices in a large database system help retrieve the images relevant to the query image without looking at every image in the database. The entropy values of colour and texture and the dominant colour are considered for measuring the similarity. The utility of the proposed image retrieval system based on the information theoretic measures is demonstrated on a benchmark dataset.

Other Details

Paper ID: IJSRDV6I20325
Published in: Volume : 6, Issue : 2
Publication Date: 01/05/2018
Page(s): 3331-3333

Article Preview

Download Article