Home   >   CSC-OpenAccess Library   >    Manuscript Information
Full Text Available

(737.05KB)
This is an Open Access publication published under CSC-OpenAccess Policy.
Publications from CSC-OpenAccess Library are being accessed from over 74 countries worldwide.
Survey on Multiple Query Content Based Image Retrieval Systems
Abeer Al-Mohamade, Ouiem Bchir
Pages - 29 - 39     |    Revised - 31-05-2019     |    Published - 30-06-2019
Volume - 13   Issue - 3    |    Publication Date - June 2019  Table of Contents
MORE INFORMATION
KEYWORDS
Content Based Image Retrieval, Multiple Query, Semantic Gap, User Interest.
ABSTRACT
This paper reviews multiple query approaches for Content-Based Image Retrieval systems (MQIR). These are recently proposed Content-Based Image Retrieval systems that enhance the retrieval performance by conveying a richer understanding of the user high-level interest to the retrieval system. In fact, by allowing the user to express his interest using a set of query images, MQIR bridge the semantic gap with the low-level image features. Nevertheless, the main challenge of MQRI systems is how to compute the distances between the set of query images and each image in the database in a way that enhances the retrieval results and reflects the high-level semantic the user is interested in. For this matter, several approaches have been reported in the literature. In this paper, we investigate existing multiple query retrieval systems. We describe each approach, detail the way it computes the distances between the set of query images and each image in the database, and analyze its advantages and disadvantages in reflecting the high-level semantics meant by the user.
1 Google Scholar 
2 refSeek 
3 BibSonomy 
4 Doc Player 
5 Scribd 
6 SlideShare 
1 Ben Ismail M. M. "A Survey on Content-based Image Retrieval." International Journal of Advanced Computer Science and Applications, Vol. 8, No. 5, pp. 159-170, 2017.
2 J. Komal , V. Akhilesh, G. Savita, Swati Goel. "A Survey on Recent Image Indexing and Retrieval Techniques for Low-Level Feature Extraction in CBIR Systems," in IEEE International Conference on Computational Intelligence & Communication Technology (CICT), 2015.
3 Jing-Ming Guo J. M, H. Prasetyo, J. H. Chen. "Content-Based Image Retrieval Using Error Diffusion Block Truncation Coding Features," IEEE Transactions on Circuits and Systems for Video Technology, vol.25 (3), pp. 466-481, 2015.
4 S. D. Thepade and Y. D.Shinde "Robust CBIR using sectorisation of hybrid wavelet transforms with Cosine-Walsh, Cosine-Kekre, Cosine-Hartley combinations," in International Conference on Pervasive Computing (ICPC), 2015.
5 N. Gupta, S. Das, S.Chakraborti ."Extracting information from a query image, for content based image retrieval," in Eighth International Conference on Advances in Pattern Recognition (ICAPR), 2015.
6 P.P. Hassekar, R.R.Sawant. "Experimental analysis of perceptual based texture features for image retrieval," in InternationalConference onCommunication,Information & Computing Technology (ICCICT), 2015.
7 N. S. Patil and S. D.Sawarkar "Semantic Concept Detection in Video Using Hybrid Model of CNN and SVM Classifiers" International Journal of Image Processing (IJIP), vol.13(2), pp. 13-28, 2019.
8 K. J. Hsiao, J. Calder, A.O.Hero. "Pareto-Depth for Multiple-Query Image Retrieval," IEEE Transactions on Image Processing, vol.24(2), pp. 583-594, 2015.
9 C. S. Won, D. K. Park, S. J.Park " Efficient use of MPEG-7 edge histogram descriptor," Etri Journal, vol .24, no. 1, pp. 23-30, 2013.
10 H.Alraqibah, M. M. Ben Ismail, O.Bchir . "Empirical Comparison of Visual Descriptors for Content based X-ray Image Retrieval," in International Conference on Image and Signal Processing, Cherbourg, 2014.
11 S.Otaiba, S.Qassim, O.Bchir, M. M.Ben Ismail." Empirical comparison of visual descriptors for multiple bleeding spots recognition in wireless capsule endoscopy video," in International Conference on Computer Analysis of Images and Patterns (CAIP), York, UK, 2014.
12 S. M. Tahaghoghi, J. A.Thom , H. E. Williams. "Are two pictures better than one?," In Proceedings of the 12th Australasian database conference ,IEEE Computer Society, January, 2001, pp. 138-144).
13 S. M.Tahaghoghi , J.A.Thom , H. E. Williams."Multiple example queries in content-based image retrieval," In International Symposium on String Processing and Information Retrieval (pp. 227-241). Springer, Berlin, Heidelberg, September 2002.
14 J.Tang, S. Acton. "An Image Retrieval Algorithm Using multiple query Images," in Seventh International Symposium on Signal Processing and its Applications, Paris, France,2013.
15 M. J. Swain and D. H. Ballard. "Color indexing," IJCV,vol. 7(1), pp.11-32,1991.
16 M. Nakazato and T. S. Huang. "Extending Image Retrieval with Group-Oriented Interface," in the IEEE International Conference on Multimedia & Expo (ICME), Lausanne, Switzerland, 2002.
17 S. Mika, G. Rätsch, J. Weston, B.Scholkopf, K. R. "Fisher Discriminant Analysis with Kernels," in IEEE Conference on Neural Networks for Signal Processing,1999.
18 Q.Iqbal and J. K.Aggarwa. "Feature Integration, Multi-image Queries and Relevance Feedback in Image Retrieval," in International Conference on Visual Information Systems, Miami, Florida, 2003.
19 R.Brunelli and O.Mich. "Image Retrieval by Examples, IEEE Transactions On Multimedia," vol. 2(3), pp. 164-170,2000.
20 M.Hazewinkel. "Mahalanobis distance," Encyclopedia of Mathematics, Springer,2001.
21 M.Hazewinkel. "Lagrange multipliers," Encyclopedia of Mathematics, Springer,1998.
22 J.Simily and B.Kannan. "Multi Query Image Retrieval System with Application to Mammogram Images", International Journal of Advanced Research in Computer Science, vol.3(3), pp. 469-474, 2012.
23 S.Nepal and M.V.Ramakrishna. "MultiFeature Query by Multiple Examples in Image Databases, Advances In Data Management," McGrawHill Publishing Company Ltd,2000.
24 L.Zhu and A.Zhang. "Supporting multi-example image queries in image databases," IEEE International Conference on Multimedia and Expo, New York, NY,2000.
Mrs. Abeer Al-Mohamade
College of Computer and Information Sciences, Computer Science Department, King Saud University, Riyadh - Saudi Arabia
abeer.cs.edu@gmail.com
Mrs. Ouiem Bchir
College of Computer and Information Sciences Computer Science Department, King Saud University, Riyadh - Saudi Arabia