Massively parallel KD-tree construction and nearest neighbor search algorithms

Linjia Hu, S. Nooshabadi, M. Ahmadi
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引用次数: 30

Abstract

This paper presents parallel algorithms for the construction of k dimensional tree (KD-tree) and nearest neighbor search (NNS) on massively parallel architecture (MPA) of graphics processing unit (GPU). Unlike previous parallel algorithms for KD-tree, for the first time, our parallel algorithms integrate high dimensional KD-tree construction and NNS on an MPA platform. The proposed massively parallel algorithms are of comparable quality as traditional sequential counterparts on CPU, while achieve high speedup performance on both low and high dimensional KD-tree. Low dimensional KD-tree construction and NNS algorithms, presented in this paper, outperform their serial CPU counterparts by a factor of up to 24 and 218, respectively. For high dimensional KD-tree, the speedup factors are even higher, raising to 30 and 242, respectively. Our implementations will potentially benefit real time three-dimensional (3D) image registration and high dimensional descriptor matching.
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大规模并行kd树构建和最近邻搜索算法
本文在图形处理器(GPU)的大规模并行架构(MPA)上,提出了k维树(KD-tree)的构造和最近邻搜索(NNS)的并行算法。与以往的kd树并行算法不同,我们的并行算法首次在MPA平台上集成了高维kd树构建和神经网络。本文提出的大规模并行算法在CPU上具有与传统顺序算法相当的质量,同时在低维和高维kd树上都具有较高的加速性能。本文提出的低维kd树构建和NNS算法的性能分别比串行CPU算法高出24倍和218倍。对于高维kd树,加速因子甚至更高,分别提高到30和242。我们的实现将潜在地有利于实时三维(3D)图像配准和高维描述符匹配。
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