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Classification and feature extraction methods with applications to image database retrieval.

机译:分类和特征提取方法及其在图像数据库检索中的应用。

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摘要

For an image database, image Retrieval is to find the collection of images that interest its users. It is a difficult question in statistical analysis since image databases are often very large and of high dimensionality. In this dissertation, we will investigate how images can be classified and retrieved automatically, quickly and accurately.; In Chapter 1, we will give an overview of the problem. First we discuss some representations of color, texture and shape features. Secondly, we introduce the problem we aim to tackle. We consider classification as the fundamental problem while paying less attention to the sophisticated engineering details.; Chapter 2 talks about statistical models that have been proposed for classification problems. We discuss their advantages and disadvantages with respect to their applicability to image retrieval.; Chapter 3 proposes a new ensemble scheme Mutual-exclusive Boosting (MxBoost). Traditional ensemble schemes such as Bagging and Boosting can improve most classification methods, but they are computationally expensive, require large amount of storage and suffer from long classification time. MxBoost can improve classifier ensembles without increasing the ensemble size, therefore make it attractive for online classification problems where classification has to be performed quickly.; Chapter 4 discusses the issue of feature extraction. Image database is often of very high dimension. However, a user may be interested in only a few of them when s/he queries the database. Selecting a number of variables wisely can improve both classification accuracy as well as retrieval speed.; The last chapter proposes a new directional feature extraction method Spin Discriminant Analysis (SDA). Its connections with Linear Discriminant Analysis (LDA) and Parzen's Window method are established. Extensive experiments are carried out to show that SDA is an effective classification method.
机译:对于图像数据库,图像检索将查找其用户感兴趣的图像集合。由于图像数据库通常非常大且具有高维度,因此在统计分析中这是一个难题。在本文中,我们将研究如何自动,快速地准确地对图像进行分类和检索。在第1章中,我们将概述该问题。首先,我们讨论颜色,纹理和形状特征的一些表示。其次,介绍我们要解决的问题。我们认为分类是基本问题,而对复杂的工程细节则较少关注。第2章讨论了针对分类问题提出的统计模型。我们讨论了它们在图像检索中的适用性的优缺点。第3章提出了一种新的集成方案互斥增强(MxBoost)。传统的集成方案(例如Bagging和Boosting)可以改进大多数分类方法,但是它们计算量大,需要大量存储并且遭受较长的分类时间。 MxBoost可以在不增加合奏大小的情况下改进分类器集合,因此使其对于必须快速执行分类的在线分类问题具有吸引力。第4章讨论了特征提取的问题。图像数据库通常具有很高的维度。但是,用户在查询数据库时可能只对其中一些感兴趣。明智地选择多个变量可以提高分类准确性和检索速度。最后一章提出了一种新的方向特征提取方法自旋判别分析(SDA)。建立了与线性判别分析(LDA)和Parzen窗方法的联系。大量实验表明,SDA是一种有效的分类方法。

著录项

  • 作者

    You, Huaxin.;

  • 作者单位

    University of California, Santa Barbara.;

  • 授予单位 University of California, Santa Barbara.;
  • 学科 Statistics.; Information Science.; Computer Science.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 101 p.
  • 总页数 101
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 统计学;信息与知识传播;自动化技术、计算机技术;
  • 关键词

  • 入库时间 2022-08-17 11:46:18

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