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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Fast exact k nearest neighbors search using an orthogonal search tree
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Fast exact k nearest neighbors search using an orthogonal search tree

机译:使用正交搜索树进行快速精确的k个最近邻居搜索

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摘要

The problem of k nearest neighbors (kNN) is to find the nearest k neighbors for a query point from a given data set. In this paper, a novel fast kNN search method using an orthogonal search tree is proposed. The proposed method creates an orthogonal search tree for a data set using an orthonormal basis evaluated from the data set. To find the kNN for a query point from the data set, projection values of the query point onto orthogonal vectors in the orthonormal basis and a node elimination inequality are applied for pruning unlikely nodes. For a node, which cannot be deleted, a point elimination inequality is further used to reject impossible data points. Experimental results show that the proposed method has good performance on finding kNN for query points and always requires less computation time than available kNN search algorithms, especially for a data set with a big number of data points or a large standard deviation.
机译:k个最近邻居(kNN)的问题是从给定的数据集中找到查询点的最近k个邻居。本文提出了一种新的使用正交搜索树的快速kNN搜索方法。所提出的方法使用从数据集评估的正交基础为数据集创建正交搜索树。为了从数据集中找到查询点的kNN,将查询点在正交基础上的投影值投影到正交向量上,并将节点消除不等式应用于修剪不太可能的节点。对于无法删除的节点,进一步使用点消除不等式拒绝不可能的数据点。实验结果表明,所提出的方法在查找查询点的kNN方面具有良好的性能,并且与可用的kNN搜索算法相比,总是需要较少的计算时间,特别是对于具有大量数据点或大标准偏差的数据集。

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