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High-dimensional image descriptor matching using highly parallel KD-tree construction and approximate nearest neighbor search

机译:使用高度平行的KD树构建和近似最近邻搜索匹配的高维图像描述符

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To overcome the high computational cost associated with the high-dimensional digital image descriptor matching, this paper presents a set of integrated parallel algorithms for the construction of K-dimensional tree (KD-tree) and P approximate nearest neighbor search (P-ANNS) on the modern massively parallel architectures (MPA). To improve the runtime performance of the P-ANNS, we propose an efficient sliding window for a parallel buffered P-ANNS on KD-tree to mitigate the high cost of global memory accesses. When applied to high dimensional real-world image descriptor datasets, the proposed KD-tree construction and the buffered P-ANNS algorithms are of comparable matching quality to the traditional sequential counterparts on CPU, while outperforming their serial CPU counterparts by speedup factors of up to 17and 163, respectively. The algorithms are also studied for the performance impact factors to obtain the optimal runtime configurations for various datasets. Moreover, we verify the features of the parallel algorithms on typical 3D image matching scenarios. With the classical local image descriptor signature of histograms of orientations (SHOT) datasets, the parallel KD-tree construction and image descriptor matching can achieve up to 11 and 138-fold speedups, respectively. (C) 2019 Elsevier Inc. All rights reserved.
机译:为了克服与高维数字图像描述符匹配相关的高计算成本,本文介绍了一组集成的并行算法,用于构建K维树(KD树)和P近似最近邻南搜索(P-ANN)在现代大规模并行架构(MPA)。为了提高P-Ann的运行时性能,我们提出了一个有效的滑动窗口,用于在KD-Tree上进行平行缓冲P-Ann,以减轻全局存储器访问的高成本。当应用于高维实世界图像描述符数据集时,所提出的KD树施工和缓冲的P-ANN算法与CPU上的传统连续对应物相比具有可比的匹配质量,同时通过高速的加速因素表现出串行CPU对应物分别为173。还研究了算法,用于性能影响因素,以获得各种数据集的最佳运行时配置。此外,我们验证了并行算法的特征在典型的3D图像匹配方案上。利用取向直方图(拍摄)数据集的典型本地图像描述符签名,并行KD树构造和图像描述符匹配可以分别实现高达11和138倍的加速。 (c)2019 Elsevier Inc.保留所有权利。

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