An Efficient Perceptual of CBIR System using MIL-SVM
Classification and SURF
Feature Extraction
Bhuvana Shanmugam1, Radhakrishnan Rathinavel2,
Tamije Perumal1 and Subhakala Subbaiyan1
1 Department of Computer
Science and Engineering, Sri Krishna College of Technology, India
2Vidhya Mandhir Institute
of Technology, India
Abstract: Hasty increase in use of color image in
recent years has motivated to the need of retrieval system for color image.
Content Based Image Retrieval (CBIR) system is used to retrieve similar images
from large image repositories based on color, texture and shape. In CBIR, the
invariance to geometrical transformation is one of the most desired properties.
Speeded Up Robust Feature (SURF) and Multiple Instance Learning Support Vector
Machine (MIL-SVM) are proposed for extracting invariant features and improving
the accuracy of image retrieval respectively. The proposed system consists of
the following phases 1) Image Segmentation using Quad tree Segmentation 2) Extraction of features using SURF 3) Classification of
images using MIL-SVM 4) Codebook design using
Lindae-Buzo-Gray (LBG) algorithm 5)Measurement of Similarity between Query
image and the database image using Histogram Intersection (HI). In comparison
with the existing approach, the proposed approach significantly improves the
retrieval accuracy from 74.5% to 86.3%.
Keywords: SURF, MIL-SVM, LBG, HI.
Received February 18, 2014; accepted September 9, 2014