基于下界树的最近邻快速搜索算法

Yong-Sheng Chen, Y. Hung, C. Fuh
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引用次数: 22

摘要

提出了一种新的快速最近邻搜索算法。在预处理阶段,该算法通过对数据库中的样本点进行聚类,构造下界树。如果距离的下界已经大于最小距离,则可以避免计算查询和样本点之间的距离。由于使用下界树的内部节点计算下界的计算代价小于距离的计算代价,因此可以加快搜索过程。为了减少实际计算的下界的数量,在遍历树时使用赢家更新搜索策略。此外,还可以对查询点和采样点进行转换,进一步提高效率。实验表明,该算法可以大大加快最近邻搜索的速度。将该算法应用于Nayar目标识别系统的真实数据库中,其速度比穷举搜索快1000倍左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast algorithm for nearest neighbor search based on a lower bound tree
This paper presents a novel algorithm for fast nearest neighbor search. At the preprocessing stage, the proposed algorithm constructs a lower bound tree by agglomeratively clustering the sample points in the database. Calculation of the distance between the query and the sample points can be avoided if the lower bound of the distance is already larger than the minimum distance. The search process can thus be accelerated because the computational cost of the lower bound which can be calculated by using the internal node of the lower bound tree, is less than that of the distance. To reduce the number of the lower bounds actually calculated the winner-update search strategy is used for traversing the tree. Moreover, the query and the sample points can be transformed for further efficiency improvement. Our experiments show that the proposed algorithm can greatly speed up the nearest neighbor search process. When applying to the real database used in Nayar's object recognition system, the proposed algorithm is about one thousand times faster than the exhaustive search.
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