We propose an advanced use of the whiteness hypothesis on the noise to imrove denoising performances. We show the interest of evaluating the residual whiteness by correlation measures in multiple applications. First, in a variational denoising framework, we show that a cost function locally constraining the residual whiteness can replace the L2 norm commonly used in the white Gaussian case, while significantly improving the denoising performances. This term is then completed by cost function constraining the residual raw moments which are a mean to control the residual distribution. In the second part of our work, we propose an alternative to the likelihood ratio, leading to the L2 norm in the white Gaussian case, to evaluate the dissimil...
International audienceWe propose a new methodology based on bilevel programming to remove additive w...
Recently, the application of rank minimization to image denoising has shown remarkable denoising res...
Denoising is the problem of removing the inherent noise from an image. The standard noise model is a...
We propose an advanced use of the whiteness hypothesis on the noise to imrove denoising performances...
Nous proposons une étude de l’utilisation avancée de l’hypothèse de blancheur du bruit pour améliore...
International audienceIn this work, we address the problem of defining a robust patch dissimilarity ...
This thesis studies non-local methods for image processing, and their application to various tasks s...
Variational and PDE-based methods have been widely used over the past two decades for edge-preservin...
International audienceMany tasks in computer vision require to match image parts. While higher-level...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
The problem studied in this thesis is denoising images corrupted by additive Gaussian white noi...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
The non-local Bayesian (NLB) patch-based approach of Le-brun, Buades, and Morel [12] is considered a...
Cette thèse porte sur la restauration d image en présence d un bruit gaussien, un bruit impulsionnel...
International audienceWe propose a new methodology based on bilevel programming to remove additive w...
Recently, the application of rank minimization to image denoising has shown remarkable denoising res...
Denoising is the problem of removing the inherent noise from an image. The standard noise model is a...
We propose an advanced use of the whiteness hypothesis on the noise to imrove denoising performances...
Nous proposons une étude de l’utilisation avancée de l’hypothèse de blancheur du bruit pour améliore...
International audienceIn this work, we address the problem of defining a robust patch dissimilarity ...
This thesis studies non-local methods for image processing, and their application to various tasks s...
Variational and PDE-based methods have been widely used over the past two decades for edge-preservin...
International audienceMany tasks in computer vision require to match image parts. While higher-level...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
The problem studied in this thesis is denoising images corrupted by additive Gaussian white noi...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
The non-local Bayesian (NLB) patch-based approach of Le-brun, Buades, and Morel [12] is considered a...
Cette thèse porte sur la restauration d image en présence d un bruit gaussien, un bruit impulsionnel...
International audienceWe propose a new methodology based on bilevel programming to remove additive w...
Recently, the application of rank minimization to image denoising has shown remarkable denoising res...
Denoising is the problem of removing the inherent noise from an image. The standard noise model is a...