Abstract:
One of the common queries in spatial databases is the (K) Nearest Neighbor Query that discovers the (K) closest objects to a query object. Processing of spatial queries, ...Show MoreMetadata
Abstract:
One of the common queries in spatial databases is the (K) Nearest Neighbor Query that discovers the (K) closest objects to a query object. Processing of spatial queries, in most cases, is accomplished by indexing spatial data by an access method. In this paper, we present algorithms for Nearest Neighbor Queries using a disk based structure that belongs to the Quad tree family, the xBR-tree, that can be used for indexing large point datasets. We demonstrate performance results (I/O efficiency and execution time) of alternative Nearest Neighbor algorithms, using real datasets.
Published in: 2011 15th Panhellenic Conference on Informatics
Date of Conference: 30 September 2011 - 02 October 2011
Date Added to IEEE Xplore: 03 November 2011
Print ISBN:978-1-61284-962-1