This thesis studies non-local methods for image processing, and their application to various tasks such as denoising. Natural images contain redundant structures, and this property can be used for restoration purposes. A common way to consider this self-similarity is to separate the image into "patches". These patches can then be grouped, compared and filtered together.In the first chapter, "global denoising" is reframed in the classical formalism of diagonal estimation and its asymptotic behaviour is studied in the oracle case. Precise conditions on both the image and the global filter are introduced to ensure and quantify convergence.The second chapter is dedicated to the study of Gaussian priors for patch-based image denoising. Such prio...
We propose an advanced use of the whiteness hypothesis on the noise to imrove denoising performances...
This work looks at two patch based image processing methods in a Bayesian risk minimization framewor...
Image restoration tasks are ill-posed problems, typically solved with priors. Since the optimal prio...
This thesis studies non-local methods for image processing, and their application to various tasks s...
In this thesis, we investigate the patch-based image denoising and super-resolution under the Bayesi...
In this thesis, we investigate the patch-based image denoising and super-resolution under the Bayesi...
The problem studied in this thesis is denoising images corrupted by additive Gaussian white noi...
With the explosion in the number of digital images taken every day, people are demanding more accura...
This thesis addresses informational formulation of image processing problems. This formulation expre...
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...
We propose a differentiable algorithm for image restoration inspired by the success of sparse models...
International audienceMany tasks in computer vision require to match image parts. While higher-level...
Several patch-based models have been proposed for image restoration in the literature. A common feat...
Several patch-based models have been proposed for image restoration in the literature. A common feat...
We propose an advanced use of the whiteness hypothesis on the noise to imrove denoising performances...
This work looks at two patch based image processing methods in a Bayesian risk minimization framewor...
Image restoration tasks are ill-posed problems, typically solved with priors. Since the optimal prio...
This thesis studies non-local methods for image processing, and their application to various tasks s...
In this thesis, we investigate the patch-based image denoising and super-resolution under the Bayesi...
In this thesis, we investigate the patch-based image denoising and super-resolution under the Bayesi...
The problem studied in this thesis is denoising images corrupted by additive Gaussian white noi...
With the explosion in the number of digital images taken every day, people are demanding more accura...
This thesis addresses informational formulation of image processing problems. This formulation expre...
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...
We propose a differentiable algorithm for image restoration inspired by the success of sparse models...
International audienceMany tasks in computer vision require to match image parts. While higher-level...
Several patch-based models have been proposed for image restoration in the literature. A common feat...
Several patch-based models have been proposed for image restoration in the literature. A common feat...
We propose an advanced use of the whiteness hypothesis on the noise to imrove denoising performances...
This work looks at two patch based image processing methods in a Bayesian risk minimization framewor...
Image restoration tasks are ill-posed problems, typically solved with priors. Since the optimal prio...