A Hybrid Approach for content based image retrieval from large Dataset
Devendra Kurwe, Prof. Anjna Jayant Deen, Dr. Rajeev Pandey "A Hybrid Approach for content based image retrieval from large Dataset". International Journal of Computer Trends and Technology (IJCTT) V23(1):16-21, May 2015. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
Image processing is one of the methods to convert
an image into digital form and perform some
operations on it, in order to get an enhanced image
or to extract some useful information from it. The
volume of digital images generated and uploaded
on the internet are very large. The major problem is
retrieving the desired images from huge collection
of images. To improve the retrieval performance an
accurate and efficient system is required. Content
based image retrieval technique has been a very
useful system. Today content based image retrieval
is a required concept, while dealing with multiple
activities daily today either with computer or web
or mobile we often need to query the database to
find efficient required output in short time. In this
paper we are proposing a hybrid approach which is
the combination of genetic and Bayesian algorithm
which giving us the better results in some aspects
which overcomes the disadvantages of the existing
algorithm and find its suitable in point of efficiency
and accuracy. For the valuation of result two
standard parameters one is Recall and another is
Precision are used which shows better value in
comparing to other retrieval algorithms.
References
1. Zhong Su, Hongjiang Zhang, Stan Li, and Shaoping
Ma “Relevance Feedback in Content-Based Image
Retrieval: Bayesian Framework, Feature Subspaces,
and Progressive Learning” IEEE Transactions On
Image Processing, August 2003
2. Sumaira Muhammad Hayat Khan, Dr.Ayyaz
Hussain and Dr.Imad Fakhri Taha Alshaikhli
“Comparative study on Content-Based Image
Retrieval (CBIR)” International Conference on
Advanced Computer Science Applications and
Technologies, 2012.
3. Chih-Chin Lai and Ying-Chuan Chen “A User-
Oriented Image Retrieval System Based on
Interactive Genetic Algorithm” IEEE Transactions
On Instrumentation And Measurement, October
2011
4. Prachi Bhende and Prof. A. N. Cheeran “Content
Based Image Retrieval in Medical Imaging”
International Journal of Computational Engineering
Research.
5. Mohd. Danish, Ritika Rawat and Ratika Sharma “A
Survey: Content Based Image Retrieval Based On
Color, Texture, Shape & Neuro Fuzzy” International
Journal of Engineering Research and Applications,
September 2013.
6. Khlifia Jayech and Mohamed Ali Mahjoub “New
approach using Bayesian Network to improve
content based image classification systems” IJCSI
International Journal of Computer Science Issues,
November 2010
7. Nidhi Singhai and Prof. Shishir K. Shandilya “A
Survey On: Content Based Image Retrieval
Systems” International Journal of Computer
Applications, July 2010.
8. Ritika Hirwane “Fundamental of Content Based
Image Retrieval” International Journal of Computer
Science and Information Technologies, (2012).
9. Neha Jain, Sumit Sharma and Ravi Mohan Sairam
“Content Base Image Retrieval using Combination
of Color, Shape and Texture Features” International
Journal of Advanced Computer Research, March
2013.
10. Amanbir Sandhu and Aarti Kochhar” Content Based
Image Retrieval using Texture, Color and Shape for
Image Analysis” International Journal of Computers
& Technology, AUG 2012.
11. Hatice Cinar Akakin and Metin N. Gurcan
“Content-Based Microscopic Image Retrieval
System for Multi-Image Queries” IEEE
Transactions On Information Technology In
Biomedicine, July 2012.
12. Mr. S. Manoharan and Dr. S. Sathappan” a novel
approach for content based image retrieval using
hybrid filter techniques” International Conference
on Computer Science & Education, April 2013.
13. Nishant Singh, ShivRam Dubey, Pushkar Dixit, Jay
Prakash Gupta” Semantic Image Retrieval by
Combining Color, Texture and Shape Features”
International Conference on Computing Sciences,
(2012).
14. S.R.Surya, G.Sasikala “An Enhanced Image
Retrieval using Contribution-based Clustering
Algorithm with Spatial Feature of Texture
Primitive and Edge Detection” International Journal
of Computer Applications (0975 – 8887) August
2012.
15. Erchan Aptoula and Sebastien Lefevre
“Morphological Description of Color Images for
Content-Based Image Retrieval” IEEE Transactions
on Image Processing, vol. 18, no. 11, November
2009.
16. Mahmoud R. Hejazi, Yo-Sung Ho” An Efficient
Approach to Texture-Based Image Retrieval”
Gwangju Institute of Science and Technology, 15
October 2007.
Keywords
CBIR, Bayesian algorithm, Genetic
algorithm, Feature Extraction.