The LSD/sup h/-tree: an access structure for feature vectors

A. Henrich
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引用次数: 105

Abstract

Efficient access structures for similarity queries on feature vectors are an important research topic for application areas such as multimedia databases, molecular biology or time series analysis. Different access structures for high dimensional feature vectors have been proposed, namely: the SS-tree, the VAMSplit R-tree, the TV-tree, the SR-tree and the X-tree. All these access structures are derived from the R-tree. As a consequence, the fanout of the directory of these access structures decreases drastically for higher dimensions. Therefore we argue that the R-tree is not the best possible starting point for the derivation of an access structure for high-dimensional data. We show that k-d-tree-based access structures are at least as well suited for this application area and we introduce the LSD/sup h/-tree as an example for such a k-d-tree-based access structure for high-dimensional feature vectors. We describe the algorithms for the LSD/sup h/-tree and present experimental results comparing the LSD/sup h/-tree and the X-tree.
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LSD/sup h/树:特征向量的访问结构
特征向量相似性查询的高效访问结构是多媒体数据库、分子生物学和时间序列分析等应用领域的重要研究课题。提出了不同的高维特征向量访问结构,即:ss树、VAMSplit r树、tv树、sr树和x树。所有这些访问结构都是从r树派生出来的。因此,对于更高的维度,这些访问结构的目录的扇出会急剧减少。因此,我们认为r树并不是推导高维数据访问结构的最佳起点。我们证明了基于k-d树的访问结构至少同样适合于这个应用领域,并且我们介绍了LSD/sup h/-树作为这种基于k-d树的高维特征向量访问结构的示例。我们描述了LSD/sup h/-树的算法,并给出了LSD/sup h/-树与x -树的比较实验结果。
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