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Embedded Lattices Tree: An Efficient Indexing Scheme For Content Based Retrieval On Image Databases

机译:嵌入式格形树:基于内容的图像数据库检索的高效索引方案

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摘要

One of the challenges in the development of a content-based multimedia indexing and retrieval application is to achieve an efficient indexing scheme. To retrieve a particular image from a large scale image database, users can be frustrated by the long query times. Conventional indexing structures cannot usually cope with the presence of a large amount of feature vectors in high-dimensional space. This paper addresses such problems and presents a novel indexing technique, the embedded lattices tree, which is designed to bring an effective solution especially for realizing the trade off between the retrieval speed up and precision. The embedded lattices tree is based on a lattice vector quantization algorithm that divides the feature vectors progressively into smaller partitions using a finer scaling factor. The efficiency of the similarity queries is significantly improved by using the hierarchy and the good algebraic and geometric properties of the lattice. Furthermore, the dimensionality reduction that we perform on the feature vectors, translating from an upper level to a lower one of the embedded tree, reduces the complexity of measuring similarity between feature vectors. In addition, it enhances the performance on nearest neighbor queries especially for high dimensions. Our experimental results show that the retrieval speed is significantly improved and the indexing structure shows no sign of degradations when the database size is increased.
机译:基于内容的多媒体索引和检索应用程序开发中的挑战之一是实现有效的索引方案。要从大规模图像数据库中检索特定图像,用户可能会因查询时间长而感到沮丧。传统的索引结构通常无法应付高维空间中大量特征向量的存在。本文针对这些问题,提出了一种新颖的索引技术,即嵌入式格点树,其设计目的是带来一种有效的解决方案,尤其是在实现检索速度与精度之间进行权衡的情况下。嵌入式晶格树基于晶格矢量量化算法,该算法使用更好的缩放因子将特征矢量逐步划分为较小的分区。通过使用层次结构以及网格的良好代数和几何特性,可以大大提高相似性查询的效率。此外,我们对特征向量执行的降维从嵌入树的较高层转换为较低层,降低了测量特征向量之间相似度的复杂性。另外,它增强了最近邻居查询的性能,尤其是对于高维度。我们的实验结果表明,当数据库大小增加时,检索速度显着提高,索引结构也没有降级的迹象。

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