Title :
Sampling from spatial databases
Author :
Olken, Rank ; Rotem, Doron
Author_Institution :
Lawrence Berkeley Lab., CA, USA
Abstract :
Techniques for obtaining random point samples from spatial databases are described. Random points are sought from a continuous domain that satisfy a spatial predicate which is represented in the database as a collection of polygons. Several applications of spatial sampling are described. Sampling problems are characterized in terms of two key parameters: coverage (selectivity), and expected stabbing number (overlap). Two fundamental approaches to sampling with spatial predicates, depending on whether one samples first or evaluates the predicate first, are discussed. The approaches are described in the context of both quadtrees and R-trees, detailing the sample-first, A/R-tree, and partial area tree algorithms. A sequential algorithm, the one-pass spatial reservoir algorithm, is also described
Keywords :
spatial data structures; tree data structures; visual databases; A/R-tree; R-trees; continuous domain; coverage; expected stabbing number; one-pass spatial reservoir algorithm; overlap; partial area tree; polygons; predicate evaluation; quadtrees; random point samples; sample-first algorithm; selectivity; sequential algorithm; spatial databases; spatial predicate; spatial sampling; Cyclotrons; Data structures; Demography; Geographic Information Systems; Laboratories; Management information systems; Probability; Sampling methods; Spatial databases; Urban planning;
Conference_Titel :
Data Engineering, 1993. Proceedings. Ninth International Conference on
Conference_Location :
Vienna
Print_ISBN :
0-8186-3570-3
DOI :
10.1109/ICDE.1993.344062