- 1 Bach, J., Fuller, C., Gupta, A., Hampapur, A., Horowitz, B., Humphrey, R., Jain, R., and Shu, C. Virage image search engine: An open framework for image management. In Proceedings of the Symposium on Storage & Retrieval for Image and Video Databases IV, IS&T/SPIE (San Jose, Calif., Feb. 1996).Google ScholarCross Ref
- 2 Beigi, M., Benitez, A., and Chang, S.-F. MetaSEEk: A content-based meta-search engine for images. To appear in Proceedings of the Symposium on Storage and Retrieval for Image and Video Databases VI, IS&T/SPIE (San Jose, Calif., Jan. 1998). (See demo at http://www.ctr.columbia. edu/metaseek.)Google Scholar
- 3 Chang, S.-F., Chert, W., Meng, H., Sundaram, H., and Zhong, D. VideoQ: An automatic content-based video search system using visual cues. In Proceedings of ACM Multimedia 1997 (Seattle, Wa., Nov. 1997). (See demo at http://www.ctr.columbia.edu/videoq.) Google ScholarDigital Library
- 4 Davis, M. Media Streams: An iconic language for video annotation. Telektronikk 89, 4 (1993), 59-71.Google Scholar
- 5 Drelinger, D., and Howe, A. Experiences with selecting search engines using meta-search. To appear in ACM Trans. Inf. Syst. Google ScholarDigital Library
- 6 Flickner, M., Sawhney, H., Niblack, W., Ashley, J., Huang, Q., Dom, B., Gorkani, M., Harrier, J., Lee, D., Petkovic, D., Steele, D., and Yanker, P. Query by image and video content: The QBIC system. IEEE Comput. 28, 9 (Sept. 1995), 23-32. Google ScholarDigital Library
- 7 Forsyth, D., Malik, J., Fleck, M., Greenspan, H., Leung, T., Belongie, S., Carson, C., and Bregler, C. Finding pictures of objects in large collections of images, Tech. Rep. CSD-96-905, Dept. of EECS, Computer Science Div., Univ. of California, Berkeley, 1996. Google ScholarDigital Library
- 8 Hauptmann, A., and Smith, M. Text, speech, and vision for video segmentation: The Informedia project. In Proceedings of AAAI Fall Symposium, Computational Models for Integrating Language and Vision (Boston, Nov. 10-12, 1995).Google Scholar
- 9 Minka, T., and Picard, R. An image database browser that learns from user interaction. Tech. Rep. 365, MIT Media Laboratory and Modeling Group, 1996.Google Scholar
- 10 Shatford, S. Analyzing the subject of a picture: A theoretical approach. Cat. Classif Q. 6, 3 (Spring 1986).Google ScholarCross Ref
- 11 Smith, J., and Chang, S.-F. Visually searching the Web for content. IEEE Multimedia 4, 3 (Summer 1997), 12-20. (See also Tech. Rep. 459- 96-25 and demo., Columbia Univ., http://www.ctr.columbia.edu/web_ seek.) Google ScholarDigital Library
- 12 Zhang, H., Low, C., and Smoliar, S. Video parsing and browsing using compressed data. J. Multimedia Tools Appl. 1, 1 (Mar. 1995), 89-111. Google ScholarDigital Library
Index Terms
Visual information retrieval from large distributed online repositories
Recommendations
The evolution of visual information retrieval
This paper seeks to provide a brief overview of those developments which have taken the theory and practice of image and video retrieval into the digital age. Drawing on a voluminous literature, the context in which visual information retrieval takes ...
Comments