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Wavelet-based signal modeling and processing algorithms with applications.

机译:基于小波的信号建模和处理算法及其应用。

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摘要

Good signal representation and the corresponding signal processing algorithms lie at the heart of the signal processing research effort. Since the 1980's wavelet analysis has become more and more a mature tool in many applications such as image compression due to some key advantages over the traditional Fourier analysis. In this thesis we first develop a wavelet-based statistical framework and an efficient algorithm for solving the linear inverse problems with application to image restoration. The result is an efficient method that produces state-of-the-art results for such problems and has potential further applications in other areas. To overcome the issues such as the blocking artifacts in using orthogonal wavelets, we next investigate the design issue of more flexible basis representations based on frames. In particular, we develop a quasi image rotation method that is based on pixel reassignment and hence retains the original image statistics. When combined with translation operators, this method provides very efficient and desirable frames for image processing. Given a frame, due to the large number of redundant basis functions in it, how to efficiently implement a frame-based algorithm is the key issue. We show this through the example of optimal signal denoising in the presence of added zero-mean white noise. We show that the optimal solution exists yet the computation toward the solution is very heavy. We develop a framework that allows for fast approximations to the optimal solution and has clear physical interpretation. This method is in essence different from the other various approximate approaches such the basis pursuit and has applications in other areas such as image segmentation. We also develop a complexity regularized iterative algorithm for getting sparse solutions to the frame-based signal denoising problem.
机译:良好的信号表示和相应的信号处理算法是信号处理研究工作的核心。自1980年代以来,由于与传统傅立叶分析相比的一些关键优势,小波分析已在许多应用(例如图像压缩)中变得越来越成熟。在本文中,我们首先开发了一种基于小波的统计框架和一种有效的算法来解决线性逆问题,并将其应用于图像复原。该结果是一种有效的方法,可针对此类问题产生最新的结果,并在其他领域具有潜在的进一步应用。为了克服诸如在使用正交小波时出现阻塞伪像的问题,我们接下来研究基于帧的更灵活的基础表示的设计问题。特别是,我们开发了一种基于像素重新分配的准图像旋转方法,因此保留了原始图像统计信息。与翻译运算符结合使用时,此方法可为图像处理提供非常有效且理想的帧。给定一个框架,由于其中有大量的冗余基础函数,如何有效地实现基于框架的算法是关键问题。我们通过添加零均值白噪声的情况下最佳信号降噪的示例来说明这一点。我们表明,存在最优解,但对该解的计算却非常繁琐。我们开发了一个框架,可以快速逼近最佳解决方案,并具有清晰的物理解释。该方法本质上与其他各种近似方法(例如,基本追踪)不同,并且在其他领域(例如图像分割)中具有应用。我们还开发了一种复杂性正则化迭代算法,以获取基于帧的信号去噪问题的稀疏解。

著录项

  • 作者

    Wan, Yi.;

  • 作者单位

    Rice University.;

  • 授予单位 Rice University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 79 p.
  • 总页数 79
  • 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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