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首页> 外文期刊>Journal of Zhejiang University. Science, A >Out-of-core clustering of volumetric datasets
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Out-of-core clustering of volumetric datasets

机译:体积数据集的核心聚类

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In this paper we present a novel method for dividing and clustering large volumetric scalar out-of-core datasets. This work is based on the Ordered Cluster Binary Tree (OCBT) structure created using a top-down or divisive clustering method. The OCBT structure allows fast and efficient sub volume queries to be made in combination with level of detail (LOD) queries of the tree. The initial partitioning of the large out-of-core dataset is done by using non-axis aligned planes calculated using Principal Component Analysis (PCA). A hybrid OCBT structure is also proposed where an in-core cluster binary tree is combined with a large out-of-core file.
机译:在本文中,我们介绍了一种用于划分和聚类大量标量外核心数据集的新方法。此工作基于使用自上而下或分隔群集方法创建的有序群集二叉树(OCBT)结构。 OCBT结构允许快速高效的子卷查询与树的细节级别(LOD)组合进行。通过使用使用主成分分析(PCA)计算的非轴对准的平面来完成大型核心数据集的初始分区。还提出了一种混合OCBT结构,其中核心簇二叉树与大核心外文件组合。

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