Model Based Approach for Content Based Image Retrievals Based on Fusion and Relevancy Methodology
T.V. Madhusudhana Rao1, S.Pallam Setty2 and Y.Srinivas3
1Department of Computer Science and Engineering, Thandra Paparaya Institute of Science and Technology, India
2 Department of Computer Science and Systems Engineering, Andhra
University, India
3Department of Information Technology, GITAM University, India
Abstract: This paper proposes a methodology
for Content Based Image Retrievals (CBIR) using the concept of Fusion and
Relevancy mechanism based on K-L Divergence associated with Generalized Gamma
Distribution to integrate the features corresponding to multiple modalities,
feature level fusion technique is considered. The relevancy approach considered
bridges the link to both high level and low level features. The target in the
CBIR is to retrieve the images of relevancy based on the query and retrieving
the most relevant images optimizing the time complexity. A Generalized Gamma
Distribution is considered in this paper to model the parameters of the query
image and basing on the maximum likelihood estimation the Generalized Gamma
Distribution, the most relevant images are retrieved. The parameters of the
Generalized Gamma Distribution are updated using the EM algorithm. The
developed model is tested on the brain images considered from brain web data of
UCI database. The performance of the model is evaluated using Precision and
Recall.
Keywords: CBIR, generalized gamma
distribution, relevance image, query image, EM algorithm, precision and recall.
Received May 23, 2014; Accepted October 2, 2013