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Towards an interactive index structuring system for content-based image retrieval in large image databases

机译:面向用于大型图像数据库中基于内容的图像检索的交互式索引构建系统

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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 and the success of tablet computers facilitate the development of many large image databases as well as the interactions with the users. This thesis [1] deals with the problem of Content-Based Image Retrieval (CBIR) on these huge masses of data. Traditional CBIR systems generally rely on three phases: feature extraction, feature space structuring and retrieval. In this thesis, we are particularly interested in the structuring phase (normally called indexing phase), which plays a very important role in finding information in large databases. This phase aims at organizing the visual feature descriptors of all images into an efficient data structure in order to facilitate, accelerate and improve further retrieval. We assume that the feature extraction phase is completed and the image feature descriptors which are usually low-level features describing the color, shape, texture, etc. of all images are available. Instead of traditional structuring methods, clustering methods which organize image descriptors into groups of similar objects (clusters), without any constraint on the cluster size, are studied. The aim is to obtain an indexed structure more adapted to the retrieval of high dimensional and unbalanced data. Clustering process can be done without prior knowledge (unsupervised clustering) or with a limited amount of prior knowledge (semi-supervised clustering).
机译:近年来,诸如数码相机之类的采集设备的扩展,存储和传输技术的发展以及平板电脑的成功推动了许多大型图像数据库的开发以及与用户的交互。本文[1]针对这些海量数据处理基于内容的图像检索(CBIR)问题。传统的CBIR系统通常依赖于三个阶段:特征提取,特征空间结构化和检索。在本文中,我们对结构化阶段(通常称为索引阶段)特别感兴趣,该阶段在大型数据库中查找信息方面起着非常重要的作用。此阶段旨在将所有图像的视觉特征描述符组织成有效的数据结构,以促进,加速和改善进一步的检索。我们假设特征提取阶段已经完成,并且图像特征描述符通常是描述所有图像的颜色,形状,纹理等的低级特征,并且可用。代替传统的构造方法,研究了将图像描述符组织为相似对象(群集)组的群集方法,而对群集大小没有任何限制。目的是获得更适合于检索高维和不平衡数据的索引结构。可以在没有先验知识(无监督的聚类)或有限数量的先验知识(半监督的聚类)的情况下完成聚类过程。

著录项

  • 作者

    Phuong, LAI Hien;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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