PCAF:基于主成分分析滤波的可扩展、高精度k-NN搜索

Huan Feng, D. Eyers, S. Mills, Yongwei Wu, Zhiyi Huang
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引用次数: 3

摘要

近似近邻(Approximate Nearest neighbors, AkNN)搜索被广泛应用于计算机视觉和机器学习等领域。然而,AkNN在高维数据集上的搜索在多核平台上表现不佳。由于内存占用很大,它的可伸缩性很差。目前使用空间细分滤波的并行AkNN搜索有助于减少内存占用,但导致精度损失。提出了一种新的基于主成分分析的并行AkNN搜索数据过滤方法——PCAF。PCAF通过在Intel和AMD多核平台上展示广泛的高维数据集的持续、高可扩展性,改进了以前的方法。此外,PCAF在AkNN搜索结果方面保持了较高的精度。
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PCAF: Scalable, High Precision k-NN Search Using Principal Component Analysis Based Filtering
Approximate k Nearest Neighbours (AkNN) search is widely used in domains such as computer vision and machine learning. However, AkNN search in high dimensional datasets does not work well on multicore platforms. It scales poorly due to its large memory footprint. Current parallel AkNN search using space subdivision for filtering helps reduce the memory footprint, but leads to loss of precision. We propose a new data filtering method -- PCAF -- for parallel AkNN search based on principal components analysis. PCAF improves on previous methods by demonstrating sustained, high scalability for a wide range of high dimensional datasets on both Intel and AMD multicore platforms. Moreover, PCAF maintains high precision in terms of the AkNN search results.
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