基于网格编码的QR-Tree K-NN查询

Guobin Li, Jine Tang
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引用次数: 0

摘要

K近邻搜索算法在复杂表面的大量数据中有着非常广泛的应用,针对海量数据的广泛性和不规则性,本文将采用QR-tree索引结构,按照全八叉树编码方法对各个节点进行编码,按照位置关系建立网格,并且与水平线和垂直线相交的节点也参与编码。在qr树中寻找节点的k邻居时,需要找到相应的网格单元。由于数据对象对网格的附着性不仅反映了其在空间上的定位,同时还通过网格之间的邻接关系描述了对象与其他对象之间的关系位置,因此可以快速找到最近的邻居点,避免了之前从根节点遍历的复杂性,提高了查询效率,减少了CPU运行时间和磁盘访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grid-Based Encoding QR-Tree K-NN Query
K neighbor search algorithm has a very wide application in complex surface of a large amount of data, aiming at the broad and irregular nature of mass data, this paper will use QR-tree index structure, in accordance with full octree encoding method to code each node, in accordance with the location relationship to establish grid, and nodes intersecting with horizontal and vertical lines are also involved in coding. When find the K-neighbor of a node in the QR-tree, it needs to find the corresponding grid units. Because the attached nature of the data object to the grid not only reflects the positioning in space, but also at the same time describes the relationship location between objects and other objects through the adjacency relationship between the grids, it can quickly find the nearest neighbor points, avoiding the complexity of previous traverse from the root node, raising the query efficiency, reducing the CPU running time and disk visits.
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