Author : P.PAVITHRA 1
Date of Publication :7th March 2015
Abstract: Content Based Image Retrieval plays a major role in medical activities, education field and in research areas. Feature combination plays a significant role in Content Based Image Retrieval. The aim of this system is to obtain the most representative fusion model for a particular keyword that is associated with multiple query images by automatically combining heterogeneous visual features. The core approach of the system is Multiobjective learning method which aims at understanding the concept of optimal visual-semantic matching function by jointly considering the different preferences of the group of images. In this system, a new strategy called Multiobjective Optimization strategy is employed in order to handle contradictions which arise in the query images associated with the same keyword.
Reference :
-
- Shortest Path Algorithm by Shivani Sanan, Leena jain, Bharti Kappor Published in International Journal of Application or Innovation in Engineering & Management (IJAIEM) Volume 2, Issue 7, July 2013
- Contrast Enhancement-Based Forensics in Digital Images Gang Cao, Yao Zhao, Senior Member, IEEE, Rongrong Ni, Member, IEEE, and Xuelong Li, Fellow, IEEE Trans. Inf. Forensics Security, vol. 9, NO. 3, march 2014.
- Evaluation of Popular Copy-Move Forgery Detection Approaches. IEEE transactions on information forensics and security, vol. 7, no. 6, december 2012. Vincent Christlein, Christian Riess, Johannes Jordan, Corinna Riess, and Elli Angelopoulou.
- Reduced Time Complexity for Detection of CopyMove Forgery Using Discrete Wavelet Transform. International Journal of Computer Applications (0975 – 8887) Vol. 6– No.7, September 2010. Saiqa Khan Arun Kulkarni
- Z. Cao, Q. Yin, X. Tang, and J. Sun. Face recognition with learning-based descriptor. In CVPR, 2010
- G. B. Huang, M. Ramesh, T. Berg, and E. LearnedMiller.Labeled faces in the wild: A database for studying face
- J. Sivic and A. Zisserman, “Video Google: A text retrieval approach to object matching in videos,” in Proc. Int. Conf. Computer Vision, 2003.