Approximate nearest neighbor searching in multimedia databases

H. Ferhatosmanoğlu, E. Tuncel, D. Agrawal, A. E. Abbadi
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引用次数: 132

Abstract

Develops a general framework for approximate nearest-neighbor queries. We categorize the current approaches for nearest-neighbor query processing based on either their ability to reduce the data set that needs to be examined, or their ability to reduce the representation size of each data object. We first propose modifications to well-known techniques to support the progressive processing of approximate nearest-neighbor queries. A user may therefore stop the retrieval process once enough information has been returned. We then develop a new technique based on clustering that merges the benefits of the two general classes of approaches. Our cluster-based approach allows a user to progressively explore the approximate results with increasing accuracy. We propose a new metric for evaluation of approximate nearest-neighbor searching techniques. Using both the proposed and the traditional metrics, we analyze and compare several techniques with a detailed performance evaluation. We demonstrate the feasibility and efficiency of approximate nearest-neighbor searching. We perform experiments on several real data sets and establish the superiority of the proposed cluster-based technique over the existing techniques for approximate nearest-neighbor searching.
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多媒体数据库中的近似近邻搜索
为近似最近邻查询开发一个通用框架。我们根据减少需要检查的数据集的能力或减少每个数据对象的表示大小的能力对当前最近邻查询处理方法进行分类。我们首先提出了对已知技术的修改,以支持近似最近邻查询的渐进处理。因此,一旦返回了足够的信息,用户就可以停止检索过程。然后,我们开发了一种基于聚类的新技术,它融合了两种一般方法的优点。我们基于聚类的方法允许用户逐步探索近似结果,并提高精度。我们提出了一种评价近似最近邻搜索技术的新度量。使用提出的和传统的指标,我们分析和比较了几种技术,并进行了详细的性能评估。我们证明了近似最近邻搜索的可行性和有效性。我们在几个真实数据集上进行了实验,并建立了所提出的基于聚类的技术相对于现有的近似最近邻搜索技术的优越性。
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