Adaptive Fractal and Wavelet Image Denoising

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....

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Main Author: Ghazel, Mohsen
Format: Others
Language:en
Published: University of Waterloo 2006
Subjects:
Online Access:http://hdl.handle.net/10012/882
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-8822013-10-04T04:07:18ZGhazel, Mohsen2006-08-22T13:59:51Z2006-08-22T13:59:51Z20042004http://hdl.handle.net/10012/882The 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.application/pdf6078210 bytesapplication/pdfenUniversity of WaterlooCopyright: 2004, Ghazel, Mohsen . All rights reserved.Electrical & Computer EngineeringWavelet Image denoisingFractal image denoisingFractal image compression.Adaptive Fractal and Wavelet Image DenoisingThesis or DissertationElectrical and Computer EngineeringDoctor of Philosophy
collection NDLTD
language en
format Others
sources NDLTD
topic Electrical & Computer Engineering
Wavelet Image denoising
Fractal image denoising
Fractal image compression.
spellingShingle Electrical & Computer Engineering
Wavelet Image denoising
Fractal image denoising
Fractal image compression.
Ghazel, Mohsen
Adaptive Fractal and Wavelet Image Denoising
description 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.
author Ghazel, Mohsen
author_facet Ghazel, Mohsen
author_sort Ghazel, Mohsen
title Adaptive Fractal and Wavelet Image Denoising
title_short Adaptive Fractal and Wavelet Image Denoising
title_full Adaptive Fractal and Wavelet Image Denoising
title_fullStr Adaptive Fractal and Wavelet Image Denoising
title_full_unstemmed Adaptive Fractal and Wavelet Image Denoising
title_sort adaptive fractal and wavelet image denoising
publisher University of Waterloo
publishDate 2006
url http://hdl.handle.net/10012/882
work_keys_str_mv AT ghazelmohsen adaptivefractalandwaveletimagedenoising
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