Mathematics behind a Class of Image Restoration Algorithms

The restoration techniques are usually oriented toward modeling the type of degradation in order to infer the inverse process for recovering the given image. This approach usually involves the option for a criterion to numerically evaluate the quality of the resulted image and consequently the resto...

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Main Authors: Luminita STATE, Catalina COCIANU
Format: Article
Language:English
Published: Inforec Association 2012-01-01
Series:Informatică economică
Subjects:
Online Access:http://www.revistaie.ase.ro/content/61/04%20-%20Cocianu.pdf
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spelling doaj-36fe3861cdc943ba920d3fcb15f15dd32020-11-24T22:39:27ZengInforec AssociationInformatică economică1453-13051842-80882012-01-011613749Mathematics behind a Class of Image Restoration AlgorithmsLuminita STATECatalina COCIANUThe restoration techniques are usually oriented toward modeling the type of degradation in order to infer the inverse process for recovering the given image. This approach usually involves the option for a criterion to numerically evaluate the quality of the resulted image and consequently the restoration process can be expressed in terms of an optimization problem. Most of the approaches are essentially based on additional hypothesis concerning the statistical properties of images. However, in real life applications, there is no enough information to support a certain particular image model, and consequently model-free developments have to be used instead. In our approaches the problem of image denoising/restoration is viewed as an information transmission/processing system, where the signal representing a certain clean image is transmitted through a noisy channel and only a noise-corrupted version is available. The aim is to recover the available signal as much as possible by using different noise removal techniques that is to build an accurate approximation of the initial image. Unfortunately, a series of image qualities, as for instance clarity, brightness, contrast, are affected by the noise removal techniques and consequently there is a need to partially restore them on the basis of information extracted exclusively from data. Following a brief description of the image restoration framework provided in the introductory part, a PCA-based methodology is presented in the second section of the paper. The basics of a new informational-based development for image restoration purposes and scatter matrix-based methods are given in the next two sections. The final section contains concluding remarks and suggestions for further work.http://www.revistaie.ase.ro/content/61/04%20-%20Cocianu.pdfPrincipal Component AnalysisScatter MatrixBhattacharyya Upper MarginOptimal Linear Compression/DecompressionImage Restoration
collection DOAJ
language English
format Article
sources DOAJ
author Luminita STATE
Catalina COCIANU
spellingShingle Luminita STATE
Catalina COCIANU
Mathematics behind a Class of Image Restoration Algorithms
Informatică economică
Principal Component Analysis
Scatter Matrix
Bhattacharyya Upper Margin
Optimal Linear Compression/Decompression
Image Restoration
author_facet Luminita STATE
Catalina COCIANU
author_sort Luminita STATE
title Mathematics behind a Class of Image Restoration Algorithms
title_short Mathematics behind a Class of Image Restoration Algorithms
title_full Mathematics behind a Class of Image Restoration Algorithms
title_fullStr Mathematics behind a Class of Image Restoration Algorithms
title_full_unstemmed Mathematics behind a Class of Image Restoration Algorithms
title_sort mathematics behind a class of image restoration algorithms
publisher Inforec Association
series Informatică economică
issn 1453-1305
1842-8088
publishDate 2012-01-01
description The restoration techniques are usually oriented toward modeling the type of degradation in order to infer the inverse process for recovering the given image. This approach usually involves the option for a criterion to numerically evaluate the quality of the resulted image and consequently the restoration process can be expressed in terms of an optimization problem. Most of the approaches are essentially based on additional hypothesis concerning the statistical properties of images. However, in real life applications, there is no enough information to support a certain particular image model, and consequently model-free developments have to be used instead. In our approaches the problem of image denoising/restoration is viewed as an information transmission/processing system, where the signal representing a certain clean image is transmitted through a noisy channel and only a noise-corrupted version is available. The aim is to recover the available signal as much as possible by using different noise removal techniques that is to build an accurate approximation of the initial image. Unfortunately, a series of image qualities, as for instance clarity, brightness, contrast, are affected by the noise removal techniques and consequently there is a need to partially restore them on the basis of information extracted exclusively from data. Following a brief description of the image restoration framework provided in the introductory part, a PCA-based methodology is presented in the second section of the paper. The basics of a new informational-based development for image restoration purposes and scatter matrix-based methods are given in the next two sections. The final section contains concluding remarks and suggestions for further work.
topic Principal Component Analysis
Scatter Matrix
Bhattacharyya Upper Margin
Optimal Linear Compression/Decompression
Image Restoration
url http://www.revistaie.ase.ro/content/61/04%20-%20Cocianu.pdf
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