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Non-Gaussian multivariate probability models and their application to wavelet-based image denoising.

机译:非高斯多元概率模型及其在基于小波的图像去噪中的应用。

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摘要

This thesis mainly focuses on the development of new probability models for wavelet transform coefficients of natural images. For this purpose, several important statistics of wavelet; coefficients from an image database will be demonstrated. These experiments clearly conclude that the statistics of wavelet coefficients of natural images exhibit non-Gaussian behaviors. One of the characteristics is that the coefficients are uncorrelated, but not independent. Therefore the most common multivariate probability distribution function, multivariate Gaussian, is not suitable for this problem. For this reason, non-Gaussian bivariate and multivariate probability models will be proposed to model the dependencies between coefficients.; One of the contributions of this thesis is the development of new denoising rules taking the dependencies between coefficients into account. Most simple nonlinear thresholding rules for wavelet-based denoising assume the wavelet coefficients are independent and, based on this false assumption, the use of Gaussian and Laplacian probability distribution functions will result in performance degradation. In this thesis, new non-linear shrinkage rules for wavelet based denoising will be derived using Bayesian estimation theory with the proposed non-Gaussian multivariate probability models.; Another contribution of this work is the development of simple but effective data-driven image denoising algorithms. This thesis describes subband and local adaptive image denoising algorithms exploiting interscale and intrascale dependencies using simple newly developed non-linear shrinkage rules which generalize the classical scalar soft thresholding approach. Comparison to effective data-driven techniques in the literature will be given in order to demonstrate the good performance of our algorithms.; The final objective of this thesis is the demonstration that the denoising performance can be improved significantly using redundant wavelet systems. For this purpose, the denoising algorithms will be applied both orthogonal and enhanced wavelet transforms, and performance comparisons will be given.
机译:本文主要研究自然图像小波变换系数的新概率模型的发展。为此,一些重要的小波统计;将说明图像数据库的系数。这些实验清楚地得出结论,自然图像的小波系数统计显示出非高斯行为。特征之一是系数不相关,但不是独立的。因此,最常见的多元概率分布函数多元高斯不适合该问题。因此,将提出非高斯二元和多元概率模型来建模系数之间的依赖性。本文的贡献之一是开发了新的去噪规则,其中考虑了系数之间的依赖性。对于基于小波的去噪,大多数简单的非线性阈值规则都假设小波系数是独立的,并且基于这种错误的假设,使用高斯和拉普拉斯概率分布函数将导致性能下降。本文利用贝叶斯估计理论,结合提出的非高斯多元概率模型,推导了基于小波去噪的非线性收缩规则。这项工作的另一个贡献是开发了简单但有效的数据驱动的图像去噪算法。本文介绍了使用简单的新开发的非线性收缩规则利用尺度间和尺度内相关性的子带和局部自适应图像去噪算法,这些规则概括了经典的标量软阈值方法。将与文献中有效的数据驱动技术进行比较,以证明我们算法的良好性能。本文的最终目的是证明使用冗余小波系统可以显着提高去噪性能。为此,将在正交和增强小波变换中应用去噪算法,并进行性能比较。

著录项

  • 作者

    Sendur, Levent.;

  • 作者单位

    Polytechnic University.;

  • 授予单位 Polytechnic University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 112 p.
  • 总页数 112
  • 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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