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Dynamic similarity search in multi-metric spaces
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Source International Multimedia Conference archive
Proceedings of the 8th ACM international workshop on Multimedia information retrieval table of contents
Santa Barbara, California, USA
POSTER SESSION: Poster session 1: multimedia retrieval table of contents
Pages: 137 - 146  
Year of Publication: 2006
ISBN:1-59593-495-2
Authors
Benjamin Bustos  University of Konstanz, Germany
Tomáš Skopal  Charles University in Prague, Czech Republic
Sponsors
ACM: Association for Computing Machinery
SIGGRAPH: ACM Special Interest Group on Computer Graphics and Interactive Techniques
SIGMULTIMEDIA: ACM Special Interest Group on Multimedia
Publisher
ACM  New York, NY, USA
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ABSTRACT

An important research issue in multimedia databases is the retrieval of similar objects. For most applications in multi-media databases, an exact search is not meaningful. Thus, much effort has been devoted to develop efficient and effective similarity search techniques. A recent approach, that has been shown to improve the effectiveness of similarity search in multimedia databases, resorts to the usage of combinations of metrics where the desirable contribution (weight) of each metric is chosen at query time. This paper presents the Multi-Metric M-tree (M 3 -tree), a metric access method that supports similarity queries with dynamic combinations of metric functions. The M 3-tree, an extension of the M-tree, stores partial distances to better estimate the weighed distances between routing/ground entries and each query, where a single distance function is used to build the whole index. An experimental evaluation shows that the M 3-tree may be as efficient as having multiple M-trees (one for each).


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

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B. Bustos, D. Keim, D. Saupe, T. Schreck, and D. Vranić. Using entropy impurity for improved 3D object similarity search. In Proc. IEEE International Conference on Multimedia and Expo (ICME'04), pages 1303--1306. IEEE, 2004.
 
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B. Bustos, D. Keim, D. Saupe, T. Schreck, and D. Vranić. An experimental effectiveness comparison of methods for 3D similarity search. Intl. Journal on Digital Libraries, 6(1):39--54, 2006.
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S. Hettich and S. Bay. The UCI KDD archive {http://kdd.ics.uci.edu}, 1999.
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T. Skopal. On fast non-metric similarity search by metric access methods. In Proc. 10th International Conference on Extending Database Technology (EDBT'06), LNCS 3896, pages 718--736. Springer, 2006.
 
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T. Skopal, J. Pokorný, M. Krátký, and V. Snášel. Revisiting M-tree building principles. In Proc. 7th East European Conference on Advances in Databases and Information Systems (ADBIS'03), LNCS 2798, pages 148--162. Springer, 2003.
 
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T. Skopal, J. Pokorný, and V. Snášel. Nearest neighbours search using the PM-tree. In Proc. 10th International Conference on Database Systems for Advanced Applications (DASFAA'05), LNCS 3453, pages 803--815. Springer, 2005.
 
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Collaborative Colleagues:
Benjamin Bustos: colleagues
Tomáš Skopal: colleagues