Abstract—The effect of multiplicative noise on a signal when compared with that of additive noise is very large. In this paper, we address the problem of suppressing multiplicative noise in one-dimensional signals. To deal with signals that are corrupted with multiplicative noise, we propose a denoising algorithm based on minimization of an unbiased estimator (MURE) of mean-square error (MSE). We derive an expression for an unbiased estimate of the MSE. The proposed denoising is carried out in wavelet domain (soft thresholding) by considering time-domain MURE. The parameters of thresholding function are obtained by minimizing the unbiased estimator MURE. We show that the parameters for optimal MURE are very close to the optimal parameters c...
We develop three novel wavelet domain denoising methods for subband-adaptive, spatially-adaptive and...
This paper investigates the minimum risk threshold for wavelet coefficients with additive, homosceda...
International audienceWe address the denoising of images contaminated with multiplicative noise, e.g...
We address the problem of denoising images corrupted by multiplicative noise. The noise is assumed t...
We consider the problem of optimizing the parameters of an arbitrary denoising algorithm by minimizi...
This paper introduces a different approach to wavelet denoising. Unlike traditional soft or hard thr...
We address the problem of designing an optimal pointwise shrinkage estimator in the transform domain...
In this paper, two algorithms for multiplicative noise reduction, using the undecimated separable wa...
This paper examines the influence of thresholding method on 1D signal denoising using wavelet theory...
We address the denoising of images contaminated with multiplicative noise, e.g. speckle noise. Class...
AbstractNonlinear thresholding of wavelet coefficients is an efficient method for denoising signals ...
We address the problem of image denoising for an additive white noise model without placing any rest...
Denoising methods based on wavelet domain thresholding or shrinkage have been found to be effective....
We devise a new undecimated wavelet thresholding for de-noising images corrupted by additive Gaussia...
Both wavelet denoising and denosing methods using the concept of sparsity are based on soft-threshol...
We develop three novel wavelet domain denoising methods for subband-adaptive, spatially-adaptive and...
This paper investigates the minimum risk threshold for wavelet coefficients with additive, homosceda...
International audienceWe address the denoising of images contaminated with multiplicative noise, e.g...
We address the problem of denoising images corrupted by multiplicative noise. The noise is assumed t...
We consider the problem of optimizing the parameters of an arbitrary denoising algorithm by minimizi...
This paper introduces a different approach to wavelet denoising. Unlike traditional soft or hard thr...
We address the problem of designing an optimal pointwise shrinkage estimator in the transform domain...
In this paper, two algorithms for multiplicative noise reduction, using the undecimated separable wa...
This paper examines the influence of thresholding method on 1D signal denoising using wavelet theory...
We address the denoising of images contaminated with multiplicative noise, e.g. speckle noise. Class...
AbstractNonlinear thresholding of wavelet coefficients is an efficient method for denoising signals ...
We address the problem of image denoising for an additive white noise model without placing any rest...
Denoising methods based on wavelet domain thresholding or shrinkage have been found to be effective....
We devise a new undecimated wavelet thresholding for de-noising images corrupted by additive Gaussia...
Both wavelet denoising and denosing methods using the concept of sparsity are based on soft-threshol...
We develop three novel wavelet domain denoising methods for subband-adaptive, spatially-adaptive and...
This paper investigates the minimum risk threshold for wavelet coefficients with additive, homosceda...
International audienceWe address the denoising of images contaminated with multiplicative noise, e.g...