Scalable Spatial GroupBy Aggregations Over Complex Polygons

Laila Abdelhafeez, A. Magdy, V. Tsotras
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引用次数: 2

Abstract

This paper studies a spatial group-by query over complex polygons. Groups are selected from a set of non-overlapping complex polygons, typically in the order of thousands, while the input is a large-scale dataset that contains hundreds of millions or even billions of spatial points. Given a set of spatial points and a set of polygons, the spatial group-by query returns the number of points that lie within boundaries of each polygon. This problem is challenging because real polygons (like counties, cities, postal codes, voting regions, etc.) are described by very complex boundaries. We propose a highly-parallelized query processing framework to efficiently compute the spatial group-by query. Our experimental evaluation with real data and queries has shown significant superiority over all existing techniques.
复杂多边形上的可伸缩空间分组聚合
研究了复杂多边形上的空间群查询。组是从一组不重叠的复杂多边形中选择的,通常以数千为数量级,而输入是包含数亿甚至数十亿空间点的大规模数据集。给定一组空间点和一组多边形,空间分组查询返回位于每个多边形边界内的点的数量。这个问题具有挑战性,因为真实的多边形(如县、市、邮政编码、投票区域等)是由非常复杂的边界描述的。提出了一种高度并行化的查询处理框架,以有效地计算空间分组查询。我们对真实数据和查询的实验评估显示出比所有现有技术显著的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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