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An experimental comparison of clustering methods for content-based indexing of large image databases

机译:基于内容的大型图像数据库索引聚类方法的实验比较

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摘要

In recent years, the expansion of acquisition devices such as digital cameras, the development of storage and transmission techniques of multimedia documents and the development of tablet computers facilitate the development of many large image databases as well as the interactions with the users. This increases the need for efficient and robust methods for finding information in these huge masses of data, including feature extraction methods and feature space structuring methods. The feature extraction methods aim to extract, for each image, one or more visual signatures representing the content of this image. The feature space structuring methods organize indexed images in order to facilitate, accelerate and improve the results of further retrieval. Clustering is one kind of feature space structuring methods. There are different types of clustering such as hierarchical clustering, density-based clustering, grid-based clustering, etc. In an interactive context where the user may modify the automatic clustering results, incrementality and hierarchical structuring are properties growing in interest for the clustering algorithms. In this article, we propose an experimental comparison of different clustering methods for structuring large image databases, using a rigorous experimental protocol. We use different image databases of increasing sizes (Wang, PascalVoc2006, CaltechlOl, Core130k) to study the scalability of the different approaches.
机译:近年来,诸如数码相机的获取设备的扩展,多媒体文档的存储和传输技术的发展以及平板计算机的发展,促进了许多大型图像数据库的发展以及与用户的交互。这增加了对用于在这些海量数据中查找信息的有效且鲁棒的方法的需求,包括特征提取方法和特征空间结构化方法。特征提取方法旨在为每个图像提取代表该图像内容的一个或多个视觉签名。特征空间结构化方法组织索引图像,以促进,加速和改善进一步检索的结果。聚类是一种特征空间结构化方法。有不同类型的聚类,例如层次聚类,基于密度的聚类,基于网格的聚类等。在用户可以修改自动聚类结果的交互式上下文中,增量性和层次结构是聚类算法感兴趣的特性。在本文中,我们建议使用严格的实验协议对构建大型图像数据库的不同聚类方法进行实验比较。我们使用大小不断增加的不同图像数据库(Wang,PascalVoc2006,Caltech101,Core130k)来研究不同方法的可伸缩性。

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