Similarity search in high-dimensional datasets
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Abstract
The problem of finding "similar" multimedia objects is a central one, and a popular approach is to represent objects as vectors in a high-dimensional space, and to build a spatial index over a collection of such vectors in order to retrieve the "nearest neighbors" of a query object. There are some fundamental assumptions involved here. First, that the user's notion of similarity can be captured by distance in the space that the vectors are embedded, and second, that nearest neighbors can be efficiently retrieved. In this talk, we discuss these assumptions, based on our experience with the PiQ image database project, carried out at the University of Wisconsin-Madison, and some subsequent work.We will first present a brief overview of the PiQ system and its goal of identifying the DBMS infrastructure required to support image databases, and discuss the role of similarity and nearest-neighbor queries in content-based querying. Next, we consider when the notion of "nearest neighbor" is well-defined in high-dimensional spaces, and when efficient indexing is feasible. The goal is not to suggest that indexing high-dimensional data is impossible, although our results here are mainly negative. Rather, we seek to identify the conditions under which effective indexing and retrieval techniques are feasible, and to identify the key difficulties that must be overcome. Finally, we present some indexing techniques to retrieve nearest neighbors under appropriate conditions, highlighting the role played by redundancy and approximation.
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June 2005
75 pages
Copyright © 2005 ACM.
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Association for Computing Machinery
New York, NY, United States
Publication History
Published: 17 June 2005
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