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首页> 外文期刊>IEEE transactions on multimedia >The GC-tree: a high-dimensional index structure for similarity search in image databases
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The GC-tree: a high-dimensional index structure for similarity search in image databases

机译:GC树:用于图像数据库中相似度搜索的高维索引结构

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We propose a new dynamic index structure called the GC-tree (or the grid cell tree) for efficient similarity search in image databases. The GC-tree is based on a special subspace partitioning strategy which is optimized for a clustered high-dimensional image dataset. The basic ideas are threefold: 1) we adaptively partition the data space based on a density function that identifies dense and sparse regions in a data space; 2) we concentrate the partition on the dense regions, and the objects in the sparse regions of a certain partition level are treated as if they lie within a single region; and 3) we dynamically construct an index structure that corresponds to the space partition hierarchy. The resultant index structure adapts well to the strongly clustered distribution of high-dimensional image datasets. To demonstrate the practical effectiveness of the GC-tree, we experimentally compared the GC-tree with the IQ-tree, LPC-file, VA-file, and linear scan. The result of our experiments shows that the GC-tree outperforms all other methods.
机译:我们提出了一种新的动态索引结构,称为GC树(或网格单元树),用于在图像数据库中进行有效的相似度搜索。 GC树基于特殊的子空间分区策略,该策略针对聚类的高维图像数据集进行了优化。基本思想有三个方面:1)我们基于识别数据空间中密集区域和稀疏区域的密度函数自适应地划分数据空间; 2)我们将分区集中在密集区域上,将某个分区级别的稀疏区域中的对象视为位于单个区域内; 3)我们动态地构建一个与空间分区层次结构相对应的索引结构。结果索引结构很好地适应了高维图像数据集的强聚类分布。为了证明GC树的实际有效性,我们通过实验将GC树与IQ树,LPC文件,VA文件和线性扫描进行了比较。我们的实验结果表明,GC树优于所有其他方法。

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