Incremental distance join algorithms for spatial databases

Author:

Hjaltason Gísli R.1,Samet Hanan1

Affiliation:

1. Computer Science Department and Center for Automation Research and Institute for Advanced Computer Studies, University of Maryland, College Park, Maryland

Abstract

Two new spatial join operations, distance join and distance semi-join , are introduced where the join output is ordered by the distance between the spatial attribute values of the joined tuples. Incremental algorithms are presented for computing these operations, which can be used in a pipelined fashion, thereby obviating the need to wait for their completion when only a few tuples are needed. The algorithms can be used with a large class of hierarchical spatial data structures and arbitrary spatial data types in any dimensions. In addition, any distance metric may be employed. A performance study using R-trees shows that the incremental algorithms outperform non-incremental approaches by an order of magnitude if only a small part of the result is needed, while the penalty, if any, for the incremental processing is modest if the entire join result is required.

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems,Software

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