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Clustered Sorting R-Tree: An Index for Multi-Dimensional Spatial Objects

机译:群集排序R树:多维空间对象的索引

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We propose new R-tree construction techniques (CSR-tree) for spatial databases. The main ideal of this algorithm is to make the spatial objects that near to each other in spatial space in nearest leaf nodes, and to reduce the overlap among the spatial objects' rectangles. Given a collection of multi-dimensional spatial objects with rectangles, we cluster them to k groups by distance relativity, sort all the spatial objects in the i-th (i, [1,k]) group, and then sort all the groups by the group center points, and build the R-tree bottom-up at last. We proposed and implemented several variations and performed experiments on synthetic 3D data. The experimental results show that the CSR-tree outperforms the previously R-tree methods in query efficiency and space utilization.
机译:我们为空间数据库提出了新的R树施工技术(CSR树)。该算法的主要理想是使空间物体在最近的叶节点中的空间空间中彼此靠近,并减少空间物体矩形之间的重叠。鉴于带矩形的多维空间对象的集合,我们通过距离相对性将它们纳入K组,对第i(I,[1,K])组中的所有空间对象进行排序,然后按所有组排序集团中心点,并在最后建立r树自下而上。我们提出并实施了几种变体并对合成3D数据进行了实验。实验结果表明,CSR树优于查询效率和空间利用方面先前的R树方法。

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