Open Access Open Access  Restricted Access Subscription or Fee Access

An Approach for Similarity Matching and Comparison in Content Based Image Retrieval System

Numa Bajaj, Jagbir Singh Gill, Rakesh Kumar

Abstract


Today, in the age of images and digitization relevant retrieval is quite a topic of research. With every new day thousands of pictures are getting added into the database making it a high dimensional data set. Therefore, from a high dimensional dataset to get a set of relevant images is quite a cumbersome task. In this paper, experiment has been performed on the trademark images. Trademark is a very important asset for any organization and increasing trademark images have developed a quick need to organize these images. This paper includes the implementation of HSV model for fast retrieval which use color and texture so as to extract feature vector. Experiment takes query image and retrieve twelve most relevant images to the user. Further for performance evaluation parameter used is Precision and Recall.

Cite this Article
Numa Bajaj, Jagbir Singh Gill, Rakesh Kumar. An Approach for Similarity Matching and Comparison in Content Based Image Retrieval System. Journal of Image Processing & Pattern Recognition Progress. 2015; 2(3): 57–63p.


Keywords


CBIR, HSV, recall, precision, database

Full Text:

PDF

References


Huang J, Kumar SR, Mitra M et al. Spatial color indexing and applications. International Journal of Computer Vision. 1999; 35(3): 245–268p.

Hiremath PS, Pujari J. Content based image retrieval using color, texture and shape features. In Advanced Computing and Communications ADCOM 2007. 2007; 780–784p.

Song YJ, Park WB, Kim DW et al. Content-based image retrieval using new color histogram. In Intelligent Signal Processing and Communication Systems ISPACS. 2004; 609–611p.

Murala S, Gonde AB, Maheshwari RP. Color and texture features for image indexing and retrieval. In Advance Computing Conference. 2009; 1411–1416p.

Kekre HB, Sonawane K. Comparative study of color histogram based bins approach in RGB, XYZ, Kekre's LXY and L′ X′ Y′ color spaces. In Circuits, Systems, Communication and Information Technology Applications (CSCITA). 2014; 364–369p.

Ketenci S, Gencturk B. Performance analysis in common color spaces of 2D gaussian color model for skin segmentation. In EUROCON. 2013; 1653–1657p.

Manjunath BS, Ohm JR, Vasudevan VV et al. Color and texture descriptors. Circuits and Systems for Video Technology, IEEE Transactions. 2001; 11(6): 703–715p.

Zhao Q, Yang J, Yang J et al. Stone images retrieval based on color histogram. In Image Analysis and Signal Processing. 2009; 157–161p.

Yu H, Li M, Zhang HJ et al. Color texture moments for content-based image retrieval. In Image Processing. 2002; 3: 929–932p.

Arthi K, Vijayaraghavan MJ. Content based image retrieval algorithm using colour models. International Journal of Advanced Research in Computer and Communication Engineering. 2013; 2(3): 1343–1347p.

Kekre HB, Sonawane K. Histogram partitioning for feature vector dimension reduction in bins approach for CBIR. IJECCE. 2012; 3(6): 1630–1639p.


Refbacks

  • There are currently no refbacks.


This site has been shifted to https://stmcomputers.stmjournals.com/