Some past work has suggested that lossy compression can be a good denoising tool. Building on this theme, we make the connection that quantization of transform coefficients approximates the operation of Donoho-Johnstone's wavelet thresholding, to conclude that compression (via coefficient quantization) is appropriate for filtering noise from signal. The method of quantization is scale adaptive and is facilitated by a criterion similar to Rissanen's minimum description length principle. Results show that a small number of quantization levels achieves almost the same performance of full precision thresholding, suggesting that denoising is mainly due to the zero-zone and that the full precision of the thresheld coefficients is of secondary imp...
When working with nonlinear filtering algorithms for image denoising problems, there are two crucial...
In order to improve the effects of denoising, this paper introduces the basic principles of wavelet ...
This thesis concentrates primarily on two problems that concern noise corrupted images and looks to ...
The problem of estimating a signal that is corrupted by additive noise has been of interest to many ...
In the context of wavelet denoising and compression, we study minimum description length (MDL) crite...
AbstractWavelet-based image denoising is an important technique in the area of image noise reduction...
Both wavelet denoising and denosing methods using the concept of sparsity are based on soft-threshol...
Abstractthe main idea of denoising algorithm based on wavelet adaptive threshold is that speech sign...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
Denoising by frame thresholding is one of the most basic and efficient methods for recovering a disc...
ABSTRACT Edge-preserving denoising is of great interest in image processing. This paper presents a w...
International audienceThis work addresses the unification of some basic functions and thresholds use...
AbstractWhen working with nonlinear filtering algorithms for image denoising problems, there are two...
We propose a soft thresholding approach to the minimum description length wavelet denoising. Our met...
The problem of image denoising based on wavelets is considered. The paper proposes an image denoisin...
When working with nonlinear filtering algorithms for image denoising problems, there are two crucial...
In order to improve the effects of denoising, this paper introduces the basic principles of wavelet ...
This thesis concentrates primarily on two problems that concern noise corrupted images and looks to ...
The problem of estimating a signal that is corrupted by additive noise has been of interest to many ...
In the context of wavelet denoising and compression, we study minimum description length (MDL) crite...
AbstractWavelet-based image denoising is an important technique in the area of image noise reduction...
Both wavelet denoising and denosing methods using the concept of sparsity are based on soft-threshol...
Abstractthe main idea of denoising algorithm based on wavelet adaptive threshold is that speech sign...
In the field of signal processing, one of the underlying enemies in obtaining a good quality signal ...
Denoising by frame thresholding is one of the most basic and efficient methods for recovering a disc...
ABSTRACT Edge-preserving denoising is of great interest in image processing. This paper presents a w...
International audienceThis work addresses the unification of some basic functions and thresholds use...
AbstractWhen working with nonlinear filtering algorithms for image denoising problems, there are two...
We propose a soft thresholding approach to the minimum description length wavelet denoising. Our met...
The problem of image denoising based on wavelets is considered. The paper proposes an image denoisin...
When working with nonlinear filtering algorithms for image denoising problems, there are two crucial...
In order to improve the effects of denoising, this paper introduces the basic principles of wavelet ...
This thesis concentrates primarily on two problems that concern noise corrupted images and looks to ...