IDEAL: a Vector-Raster Hybrid Model for Efficient Spatial Queries over Complex Polygons.

Dejun Teng, Furqan Baig, Qiheng Sun, Jun Kong, Fusheng Wang
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引用次数: 4

Abstract

Geometric computation can be heavy duty for spatial queries, in particular for complex geometries such as polygons with many edges based on a vector-based representation. While many techniques have been provided for spatial partitioning and indexing, they are mainly built on minimal bounding boxes or other approximation methods, which will not mitigate the high cost of geometric computation. In this paper, we propose a novel vector-raster hybrid approach through rasterization, where pixel-centric rich information is preserved to help not only filtering out more candidates but also reducing geometry computation load. Based on the hybrid model, we develop an efficient rasterization based ray casting method for point-in-polygon queries and a circle buffering method for point-to-polygon distance calculation, which is a common operation for distance based queries. Our experiments demonstrate that the hybrid model can boost the performance of spatial queries on complex polygons by up to one order of magnitude.

理想:一个矢量-栅格混合模型,用于复杂多边形的高效空间查询。
对于空间查询来说,几何计算可能是繁重的任务,特别是对于复杂的几何图形,例如基于向量表示的具有许多边的多边形。虽然已经提供了许多用于空间划分和索引的技术,但它们主要建立在最小边界盒或其他近似方法上,这不会减轻几何计算的高成本。在本文中,我们提出了一种新的矢量-栅格混合方法,通过栅格化,其中保留了以像素为中心的丰富信息,不仅有助于过滤更多的候选对象,还有助于减少几何计算负荷。基于混合模型,我们开发了一种高效的基于光栅化的光线投射方法用于点多边形查询,以及一种圆缓冲方法用于点多边形距离计算,这是基于距离查询的常用操作。实验表明,混合模型可以将复杂多边形的空间查询性能提高一个数量级。
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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