Open Access Open Access  Restricted Access Subscription or Fee Access

Content Based Sub-Image Retrieval with Relevance Feedback

Dr. E. Chandra, N. Abirami

Abstract


In this era of computing data’s are represented as images either as compressed documents or as video images itself. Since data is transmitted as images, they have to be processed for retrieval. Image retrieval is since a challenging issue in the area of computer research as systems that are currently evolving around for this purpose are not able to give an accurate level of retrieval of images as per expectations. Hence there is a high demand for such a system that can evaluate the images and fetches images of much accuracy as possible and at the earliest possible time. The aim of the paper is to improve efficiency of image retrieval, a new image retrieval scheme that applies sub-image processing with low level features of image such as color and shape embedded with segmentation and relevance feedback. It also applies local feature descriptor attributes that are computed on regions of the image. So, a combination of hybrid features and techniques are used to form a retrieval system.

Keywords


Content Based Image Retrieval (CBIR), Content Based Sub-Image Retrieval (CBSIR) , Image Features, Color Spaces, Segmentation.

Full Text:

PDF

References


“Content-based Image Retrieval”, John Eakins Margaret Graham University of Northumbria at Newcastle, JTAP Report 39, October 1999.

"A Content-Based Image Retrieval Scheme in JPEG Compressed Domain", Zhe-Ming Lu1, Su-Zhi Li, and Hans Burkhardt, International Journal of Innovative Computing, Information and Control ICIC International 2006 ISSN 1349-4198, Volume 2, Number 4, August 2006, pp. 831-839.

“Survey of the Adequate Descriptor for Content-Based Image Retrieval on the Web: Global versus Local Features”, Hichem Bannour, Lobna Hlaoua, Bechir Ayeb, CORIA 2009 - Conférence en Recherche d'Information et Applications

“Color Content-based Image Classification”, Szaboles Sergyian, 5th Slovakian-Hungarian Joint symposium on Applied Machine Intelligence and Informatics, January 25-26, 2007.

“Image Retrieval Based on Content”, Mahdy, Y.B., Shaaban, K.M. and El-Rahim, A.S.A. (2006), GVIP Journal, Vol. 6, Issue 1, Pp. 55-60.

“A Universal Model for Content-Based Image Retrieval”, Nandagopalan, S., Adiga, B.S. and Deepak, N. (2008), Proceedings of World Academy of Science, Engineering and Technology, Vol. 36, Pp. 659-662.

“Image retrieval: Current techniques, promising directions, and open issues”, Rui, Y. and Huang, T.S. (1999), Journal of Visual Communication and Image representation, Vol. 10, Pp. 39–62.

"Image Segmentation using Color and Texture features". Mustafa Ozden and Ediz Polat.

“Color Contrast Parameters using emergence features and edges features, Chapter: Colour Image Science: Exploiting Digital Media”, Trémeau, A. and P. Colantoni, P. (2002) ,John Wisley & Sons.

http://www.colorsystem.com/projekte/engl/54labe.htm


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.