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An integrated theory of image database modeling, indexing, and content-based retrieval.

机译:图像数据库建模,索引和基于内容的检索的集成理论。

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摘要

In the area of content-based image retrieval, image databases are automatically indexed and accessed with image lower-level analysis. Database level manipulations, including database organization, partition or clustering, and management, are also based on image-level analysis. In this dissertation, the philosophy of viewing an image database as a whole is emphasized. A theory of modeling and analyzing image databases is proposed to provide a quantitative measure opt the complexity of an image database with respect to a feature representation. The measure, called complexities of image databases (CID), can be used to compare (1). The different difficulties of retrieving images from image databases based on the same feature representation; and (2). The performance difference of applying various features to retrieve images from the same image database. The concept is a natural generalization of the perplexity in language modeling and speech recognition. After quantizing images using vector quantization, statistical models, such as N-block models and trigger models with respect to a given geometric configuration, are proposed for the probability estimation either in a single image or in a database as a whole. Based on the image-level estimations, several new techniques are developed for extracting comprehensive image features, which are experimentally demonstrated superior to existing techniques. Based on the database-level estimations, the cross-entropy of the adopted mode is used to define CID of the database. Extensive experiments on both synthetic and real image data demonstrate that the proposed measure of image database complexity is related to the empirical performance obtained from the standard query set and is in consistent with the perception intuition: a simpler image database has a lower complexity. Applications include the benchmarking of content-based image retrieval and the combination of image search engines.
机译:在基于内容的图像检索领域,图像数据库会自动索引并通过图像低级分析进行访问。数据库级别的操作(包括数据库组织,分区或集群以及管理)也基于图像级别的分析。本文着重从整体上看图像数据库的理念。提出了一种对图像数据库进行建模和分析的理论,以“斜体”提供一种定量方法,以针对特征表示采用图像数据库的复杂性。该度量称为图像数据库的复杂性 CID ),可用于比较(1)。基于相同特征表示从图像数据库检索图像的不同困难;和(2)。应用各种功能从同一图像数据库检索图像的性能差异。这个概念是 perplexity 在语言建模和语音识别中的自然概括。在使用矢量量化对图像进行量化之后,针对给定的几何配置,建议使用统计模型(例如 N-block 模型和 trigger 模型)来进行概率估计。单个图像或整个数据库中。基于图像级别的估计,开发了几种用于提取全面图像特征的新技术,这些新技术通过实验证明优于现有技术。基于数据库级别的估计,采用采用的模式的交叉熵定义数据库的 CID 。对合成和真实图像数据进行的大量实验表明,所提出的图像数据库复杂性度量与从标准查询集获得的经验性能有关,并且与感知直觉相符:更简单的图像数据库具有较低的复杂性。应用程序包括基于内容的图像检索的基准测试和图像搜索引擎的组合。

著录项

  • 作者

    Rao, Aibing.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 219 p.
  • 总页数 219
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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