Abstract
Extensions to the object-oriented data model are described which address the dynamic nature of video database manipulations. These extensions support the dynamic grouping of objects to form a new object or cluster, and within each cluster a set of roles may be employed and/or introduced to define the behavior and interactions of the objects. In the context of a video database system, we examine the types of video data objects that require these extensions, and consider the utility of these extended features in supporting several generic types of video database manipulations, including video classification, video editing and video production.
Chapter PDF
Similar content being viewed by others
References
Atkinson, M., F. Bancilhon, D. Dewitt, K. Dittrich, D. Maier and S. Zdonik (1989) Object-Oriented Database System Manifesto, in Proc. of 1st Int’l Conference on Deductive, Object-Oriented Databases, Kyoto, Japan, 40–57.
Biliris, A. and E. Panagos (1994) EOS User’s Guide (Release 2.1), 600 Mountain Ave, ATandT Bell Laboratories, Murray Hill, NJ 07974, USA.
Chang, S.K. (1992)Image Information Systems: Where Do We Go From Here? in IEEE Transactions on Knowledge and Data Engineering, Vol. 4 No. 5, 431–442.
Davenport, G., T.G.A. Smith and N. Pincever (1991) Cinematic Primitives for Multimedia, in IEEE Computer Graphics and Applications, 67–74.
Hirata, K. and Kato, T. (1992) Query by Visual Example - Content based Image Retrieval, in Lecture Notes in Computer Science, Vol.580, Springer-Verlag.
Jain, R. (1993) NSF Workshop on Visual Information Management Systems, in ACM SIGMOD RECORD, Vol. 22, No. 3, 57–75.
Kato, T. (1992) Database Architecture for Content-based Image Retrieval, in SPIE, Vol. 1662, Image Storage and Retrieval Systems.
Kim, W., E. Bertino and J.F. Garza. (1989) Composite Objects Revisited, in Proc. of ACM SIGMOD Int’l Conference on Management of Data, 337–347.
Lee, C. M., S.W. Cheng, and M.C. Ip (1993) Camera Break Detection Algorithms and Their Evaluation, Technical Report HKUST-CS93–10, Dept. of Computer Science, HK Univ. of Science & Technology (HKUST).
Lee, C. M. and M. C. Ip (1994) A Robust Approach for Camera Break Detection in color Video Sequence, in Proc. IAPR Workshop on Machine Vision Application (MVA’94), Kawasaki, Japan.
Li, Q. and J.L. Smith (1992) A Conceptual Model for Dynamic Clustering in Object Databases, in Proc. of 18th Int’l Conference on Very Large Data Bases, 337–347.
Li, Q. and M.S. Yuen (1993) Developing a Dynamic Mechanism for Conceptual Clustering in an Object-Oriented DBMS, Technical Report HKUST-CS93–15, Dept of Computer Science, HKUST.
Li, Q. (1995) Advanced Functions for Conceptual Clustering in Object Databases, Technical Report HKUST-CS95–21, Dept of Computer Science, HKUST.
Masunaga, Y (1989) An Object-Oriented Approach to Multimedia Database Organization and Management, in Proc. of Int’l Symp. on DASFAA, 190–200, Seoul, Korea.
Nagasaka, A. and Tanaka, Y (1992) Automatic Video Indexing and Full-Video Search for Object Appearances, in Transactions of IPSJ, Vol. 33 No. 4.
Rowe, L.A., J.S. Boreczky and C.A. Eads (1994) Indexes for User Access to Large Video Databases, in Proceedings of IS and T/SPIE Symposium on Storage and Retrieval for Image and Video Databases, San Jose, USA.
Woelk, D. and W. Kim (1987) Multimedia Information Management in an Object-Oriented Database System, in Proc. of 13th Int’l Conference on Very Large Data Bases, Brighton, 319–329.
Xiong, W., C. M. Lee, and M. C. Ip (1995) Net Comparison: A Fast and Effective Method for Classifying Image Sequence, in IS and T/SPIE Symposium on Storage and Retrieval for Image and Video Databases, San Jose, USA.
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 1995 Springer Science+Business Media Dordrecht
About this chapter
Cite this chapter
Li, Q., Lee, J.C.M. (1995). Dynamic Object Clustering for Video Database Manipulations. In: Spaccapietra, S., Jain, R. (eds) Visual Database Systems 3. VDB 1995. IFIP — The International Federation for Information Processing. Springer, Boston, MA. https://doi.org/10.1007/978-0-387-34905-3_9
Download citation
DOI: https://doi.org/10.1007/978-0-387-34905-3_9
Publisher Name: Springer, Boston, MA
Print ISBN: 978-1-4757-6937-1
Online ISBN: 978-0-387-34905-3
eBook Packages: Springer Book Archive