Variable KD-Tree Algorithms for Spatial Pattern Search and Discovery
Conference Paper, Proceedings of (NeurIPS) Neural Information Processing Systems, pp. 691 - 198, December, 2005
Abstract
In this paper we consider the problem of finding sets of points that conform to a given underlying model from within a dense, noisy set of observations. This problem is motivated by the task of efficiently linking faint asteroid detections, but is applicable to a range of spatial queries. We survey current tree-based approaches, showing a trade-off exists between single tree and multiple tree algorithms. To this end, we present a new type of multiple tree algorithm that uses a variable number of trees to exploit the advantages of both approaches. We empirically show that this algorithm performs well using both simulated and astronomical data.
BibTeX
@conference{Kubica-2005-9361,author = {Jeremy Martin Kubica and Joseph Masiero and Andrew Moore and Robert Jedicke and Andrew J. Connolly},
title = {Variable KD-Tree Algorithms for Spatial Pattern Search and Discovery},
booktitle = {Proceedings of (NeurIPS) Neural Information Processing Systems},
year = {2005},
month = {December},
pages = {691 - 198},
}
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