基于道路网络嵌入的m树空间网络查询的高效逼近

K. Shaw, Elias Ioup, J. Sample, M. Abdelguerfi, Olivier Tabone
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引用次数: 14

摘要

空间网络,如道路系统,不同于正常的地理空间系统,因为对象被限制在网络上的位置。在空间网络上执行查询需要完全不同的解决方案。大多数空间查询使用R-Tree来有效地处理它们。M-Tree是一种数据树索引,它能够索引任何度量空间中的数据。对于空间网络查询,例如range和KNN查询,M-Tree索引可以取代R-Tree索引。困难之处在于M-Tree的效率仅与使用在底层对象上的距离算法一样高。大多数网络距离算法,如A*,速度太慢,无法让M-Tree在空间网络上有效地运行。截断道路网络嵌入(tRNE)将网络映射到一个高维空间,在这个空间中,任何LP度量都可以有效地计算出网络距离的精确近似值。M-Tree与tRNE相结合,为计算空间网络查询创建了一个高效的索引结构。在执行空间网络KNN和范围查询时,M-Tree的性能大大优于网络扩展(计算空间网络查询的最流行方法)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Approximation of Spatial Network Queries using the M-Tree with Road Network Embedding
Spatial networks, such as road systems, operate differently from normal geospatial systems because objects are constrained to locations on the network. Performing queries on spatial networks demands entirely different solutions. Most spatial queries make use of an R-Tree to process them efficiently. The M-Tree is a data tree index which is capable of indexing data in any metric space. The M-Tree index can replace the R-Tree index for spatial network queries, such as range and KNN queries. The difficulty is that the M-Tree is only as efficient as the distance algorithm used on the underlying objects. Most network distance algorithms, such as A*, are too slow to allow the M-Tree to operate efficiently on spatial networks. The truncated road network embedding (tRNE) maps the network into a higher dimensional space where any LP metric can be used to efficiently compute an accurate approximation of network distance. The M-Tree combined with tRNE creates an efficient index structure for computing spatial network queries. The M-Tree substantially outperforms network expansion, the most popular method of computing spatial network queries, when performing spatial network KNN and range queries.
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