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Indexing Land Surface for Efficient kNN Query

机译:索引陆地表面以进行高效的kNN查询

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The class of k Nearest Neighbor (kNN) queries is frequently used in geospatial applications. Many studies focus on processing kNN in Euclidean and road network spaces. Meanwhile, with the recent advances in remote sensory devices that can acquire detailed elevation data, the new geospatial applications heavily operate on this third dimension, i.e., land surface. Hence, for the field of databases to stay relevant, it should be able to efficiently process spatial queries given this constrained third dimension. However, online processing of the surface k Nearest Neighbor (skNN) queries is quite challenging due to the huge size of land surface models which renders any accurate distance computation on the surface extremely slow. In this paper, for the first time, we propose an index structure on land surface that enables exact and fast responses to skNN queries. Two complementary indexing schemes, namely Tight Surface Index (TSI) and Loose Surface Index (LSI), are constructed and stored collectively on a single novel data structure called Surface Index R-tree (SIR-tree). With those indexes, we can process skNN query efficiently by localizing the search and minimizing the invocation of the costly surface distance computation and hence incurring low I/O and computation costs. Our algorithm does not need to know the value of k a priori and can incrementally expand the search region using SIR-tree and report the query result progressively. It also reports the exact shortest surface paths to the query results. We show through experiments with real world data sets that our algorithm has better performance than the competitors in both efficiency and accuracy.
机译:k个最近邻(kNN)查询的类别经常在地理空间应用程序中使用。许多研究集中在处理欧几里得和道路网络空间中的kNN。同时,随着可以获取详细高程数据的远程传感设备的最新进展,新的地理空间应用程序在三维空间即地面上大量使用。因此,为了使数据库领域保持相关性,考虑到这个受约束的三维空间,它应该能够有效地处理空间查询。然而,由于陆地表面模型的巨大规模,在线k最近邻(skNN)查询的处理非常具有挑战性,这使得在表面上进行任何精确的距离计算都非常缓慢。在本文中,我们首次提出了一种在地面上的索引结构,该结构可以对skNN查询进行准确而快速的响应。构造了两个互补的索引方案,即紧密表面索引(TSI)和松散表面索引(LSI),并将它们共同存储在一个称为表面索引R树(SIR-tree)的新颖数据结构中。利用这些索引,我们可以通过对搜索进行本地化并最大程度地减少对昂贵的表面距离计算的调用,从而有效地处理skNN查询,从而降低I / O和计算成本。我们的算法不需要知道先验k的值,可以使用SIR-tree逐步扩展搜索区域并逐步报告查询结果。它还会向查询结果报告确切的最短表面路径。通过对现实世界数据集的实验表明,我们的算法在效率和准确性上都比竞争对手更好。

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