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Adaptive fractal and wavelet image denoising.

机译:自适应分形和小波图像去噪。

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摘要

The need for image enhancement and restoration is encountered in many practical applications. For instance, distortion due to additive white Gaussian noise (AWGN) can be caused by poor quality image acquisition, images observed in a noisy environment or noise inherent in communication channels. In this thesis, image denoising is investigated. After reviewing standard image denoising methods as applied in the spatial, frequency and wavelet domains of the noisy image, the thesis embarks on the endeavor of developing and experimenting with new image denoising methods based on fractal and wavelet transforms. In particular, three new image denoising methods are proposed: context-based wavelet thresholding, predictive fractal image denoising and fractal-wavelet image denoising. The proposed context-based thresholding strategy adopts localized hard and soft thresholding operators which take in consideration the content of an immediate neighborhood of a wavelet coefficient before thresholding it. The two fractal-based predictive schemes are based on a simple yet effective algorithm for estimating the fractal code of the original noise-free image from the noisy one. From this predicted code, one can then reconstruct a fractally denoised estimate of the original image. This fractal-based denoising algorithm can be applied in the pixel and the wavelet domains of the noisy image using standard fractal and fractal-wavelet schemes, respectively. Furthermore, the cycle spinning idea was implemented in order to enhance the quality of the fractally denoised estimates. Experimental results show that the proposed image denoising methods are competitive, or sometimes even compare favorably with the existing image denoising techniques reviewed in the thesis. This work broadens the application scope of fractal transforms, which have been used mainly for image coding and compression purposes.
机译:在许多实际应用中遇到了对图像增强和恢复的需求。例如,由于加性高斯白噪声(AWGN)引起的失真可能是由于质量差的图像采集,在嘈杂的环境中观察到的图像或通信通道中固有的噪声引起的。本文研究了图像去噪。在回顾了在噪声图像的空间,频率和小波域中应用的标准图像去噪方法之后,论文着力于开发和试验基于分形和小波变换的新图像去噪方法。特别地,提出了三种新的图像去噪方法:基于上下文的小波阈值化,预测性分形图像去噪和分形小波图像去噪。所提出的基于上下文的阈值策略采用局部硬阈值和软阈值运算符,该阈值运算符在对小波系数进行阈值处理之前考虑了小波系数的紧邻区域的内容。这两种基于分形的预测方案均基于一种简单而有效的算法,用于从嘈杂的图像中估计原始无噪声图像的分形代码。然后,可以从这一预测代码重建原始图像的分形去噪估计。可以分别使用标准分形和分形小波方案将这种基于分形的去噪算法应用于噪声图像的像素域和小波域。此外,为了提高分形去噪估计的质量,实施了循环旋转的想法。实验结果表明,所提出的图像去噪方法具有竞争优势,有时甚至可以与本文综述的现有图像去噪技术相媲美。这项工作拓宽了分形变换的应用范围,该方法主要用于图像编码和压缩。

著录项

  • 作者

    Ghazel, Mohsen.;

  • 作者单位

    University of Waterloo (Canada).;

  • 授予单位 University of Waterloo (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 276 p.
  • 总页数 276
  • 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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