Abstract
In this paper a new image representation for compressed domain image retrieval and an image retrieval system are presented. To represent images compactly and hierarchically, multiple features such as color and texture features directly extracted from DCT coefficients are structurally organized using vector quantization. To train the codebook, a new Minimum Description Length vector quantization algorithm is used and it automatically decides the number of code words. To compare two images using the proposed representation, a new efficient similarity measure is designed. The new method is applied to an image database with 1,005 pictures. The results demonstrate that the method is better than two typical histogram methods and two DCT-based image retrieval methods.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Gudivada V N, Raghavan V W. Content based image retrieval systems.IEEE Computer, 1995, 28(9): 18–22.
Bach J R, Fuller C, Gupta Aet al. The virage image search engine: An open framework for image management. InProc. SPIE 2670: Storage and Retrival for Still Image and Video Databases IV, San Jose, CA, USA, Feb., 1996, pp.76–87.
Mandal M K, Idris F, Panchanathan S. A critical evaluation of image and video indexing techniques in the compressed domain.Image and Vision Computing, 1999, 17: 513–529.
Smith J R, Chang S F. Transform features for texture classification and discrimination in large image databases. InProc. IEEE Int. Conf. Image Processing, Austin, Texas, 1994, (3): 407–411.
Reeves R, Kubik K, Osberger W. Texture characterization of compressed serial images using DCT coefficients. InProc. SPIE 3022: Storage and Retrieval for Image and Video Databases V,San Jose, California, 1997, pp.398–407.
Furht Borko, Saksobhavivat P. A fast content-based multimedia retrieval technique using compressed data. InSPIE 3527: Conference on Multimedia Storage and Archiving Systems III, Boston, 1998, pp.561–571.
Shneier M, Mottaleb M A. Exploiting the JPEG compression scheme for image retrieval.IEEE Transactions on Pattern Analysis and Machine Intelligence, 1996, 18(8): 849–853.
Abdel-Malek A A, Hershey J E. Feature cueing in the discrete cosine domain.Journal of Electronic Imaging, 1994, (3): 71–80.
Shen B, Sethi I K. Direct feature extraction from compressed images. InProc. SPIE, 2670, 1996, pp.404–414.
Chang R F, Kuo W J, Tsai H C. Image retrieval on uncompressed and compressed domains. InICIP 2000, Toronto, Canada, 2000.
Wallace G K. The JPEG still picture compression standard.Communication ACM, 1991, 34(4): 31–45.
Richard E, Robert S Ledley. Texture discrimination using discrete cosine transformation shift-insensitive descriptorsPattern Recognition, 2000, 33: 1585–1598.
Huang J, Kumar S R. Spatial color indexing and applications.International Journal of Computer Vision, 1999, 35(3): 245–268.
Author information
Authors and Affiliations
Corresponding author
Additional information
FAN Yun was born in 1976. He received his Ph.D. degree from the School of Electronics Engineering, National University of Defense Technology in 2002. His research interests include content-based retrieval, image understanding, and pattern recognition.
WANG Runsheng was born in 1941. He is now a professor and a Ph.D. supervisor in the School of Electronics Engineering, National University of Defense Technology. His research interests include image understanding, pattern recognition, and information fusion.
Rights and permissions
About this article
Cite this article
Fan, Y., Wang, R. An image retrieval method using DCT features. J. Compt. Sci. & Technol. 17, 865–873 (2002). https://doi.org/10.1007/BF02960778
Received:
Revised:
Issue Date:
DOI: https://doi.org/10.1007/BF02960778