Vocabulary hierarchy optimization for effective and transferable retrieval

R. Ji, Xing Xie, H. Yao, Wei-Ying Ma
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引用次数: 28

Abstract

Scalable image retrieval systems usually involve hierarchical quantization of local image descriptors, which produces a visual vocabulary for inverted indexing of images. Although hierarchical quantization has the merit of retrieval efficiency, the resulting visual vocabulary representation usually faces two crucial problems: (1) hierarchical quantization errors and biases in the generation of “visual words”; (2) the model cannot adapt to database variance. In this paper, we describe an unsupervised optimization strategy in generating the hierarchy structure of visual vocabulary, which produces a more effective and adaptive retrieval model for large-scale search. We adopt a novel density-based metric learning (DML) algorithm, which corrects word quantization bias without supervision in hierarchy optimization, based on which we present a hierarchical rejection chain for efficient online search based on the vocabulary hierarchy. We also discovered that by hierarchy optimization, efficient and effective transfer of a retrieval model across different databases is feasible. We deployed a large-scale image retrieval system using a vocabulary tree model to validate our advances. Experiments on UKBench and street-side urban scene databases demonstrated the effectiveness of our hierarchy optimization approach in comparison with state-of-the-art methods.
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面向有效可转移检索的词汇层次优化
可扩展的图像检索系统通常涉及局部图像描述符的分层量化,从而产生用于图像倒转索引的视觉词汇表。虽然层次量化具有检索效率高的优点,但所得到的视觉词汇表示通常面临两个关键问题:(1)“视觉词”生成中的层次量化误差和偏差;(2)模型不能适应数据库的差异性。本文提出了一种生成视觉词汇层次结构的无监督优化策略,为大规模搜索提供了一种更有效的自适应检索模型。我们采用了一种新的基于密度的度量学习(DML)算法,该算法在没有监督的情况下纠正了层次优化中的词量化偏差,并在此基础上提出了一种基于词汇层次的高效在线搜索层次拒绝链。我们还发现,通过层次优化,检索模型在不同数据库之间的高效转移是可行的。我们部署了一个使用词汇树模型的大规模图像检索系统来验证我们的进展。在UKBench和街边城市场景数据库上的实验表明,与最先进的方法相比,我们的层次优化方法是有效的。
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