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Wavelet domain statistical image modeling and processing.

机译:小波域统计图像建模与处理。

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摘要

Hidden Markov Models (HMMs), a type of finite state machines for statistical modeling, have been successfully applied to speech recognition due to the fact that finite states in speech signals are amenable to the mechanism of HMMs. However, it is hard to directly apply HMMs to image modeling in the spatial domain, since there are too many states (gray-levels of pixels) in real-world images. Crouse et al have recently proposed a kind of wavelet-domain HMMs, in particular hidden Markov tree (HMT), for statistical modeling, since the wavelet transform can decorrelate image data by reducing the number of states of wavelet coefficients, thus making wavelet-domain HMMs manipulable and useful for statistical image modeling. In this dissertation, two important topics of wavelet-domain HMMs are studied in terms of their applications to statistical image modeling and processing. One is how to adapt wavelet-domain HMMs to a variety of statistical image processing problems with the efficient model training. The other is how to develop effective image processing algorithms using wavelet-domain HMMs for different applications. We firstly introduce wavelet-domain HMMs proposed Crouse et al, then several specific techniques are developed, including an efficient initialization method to improve the training efficiency, and the graphical grouping and classification schemes to improve the modeling accuracy. These improvements further inspire us to study wavelet-domain HMMs regarding their applications to image denoising, image segmentation, texture analysis, and texture synthesis. We are able to obtain state-of-the-art performance in these applications by developing powerful wavelet-domain HMMs as well as effective image processing algorithms.
机译:隐马尔可夫模型(HMM)是一种用于统计建模的有限状态机,由于语音信号中的有限状态适合HMM的机制,因此已成功应用于语音识别。但是,由于现实世界图像中的状态(像素的灰度级)太多,很难将HMM直接应用于空间域中的图像建模。 Crouse等人最近提出了一种用于统计建模的小波域HMM,尤其是隐马尔可夫树(HMT),因为小波变换可以通过减少小波系数的状态数来解相关图像数据,从而使小波域成为可能。 HMM可操作,对于统计图像建模很有用。本文就小波域HMM在统计图像建模和处理中的应用进行了研究。一种是通过有效的模型训练如何使小波域HMM适应各种统计图像处理问题。另一个是如何使用小波域HMM针对不同应用开发有效的图像处理算法。我们首先介绍了Crouse等人提出的小波域HMM,然后开发了几种具体技术,包括提高训练效率的有效初始化方法,以及提高建模精度的图形分组和分类方案。这些改进进一步激励我们研究小波域HMM,并将其应用于图像去噪,图像分割,纹理分析和纹理合成。通过开发功能强大的小波域HMM和有效的图像处理算法,我们能够在这些应用程序中获得最先进的性能。

著录项

  • 作者

    Fan, Guoliang.;

  • 作者单位

    University of Delaware.;

  • 授予单位 University of Delaware.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2001
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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