In this work, we propose a framework to learn a local regularization model for solving general image restoration problems. This regularizer is defined with a fully convolutional neural network that sees the image through a receptive field corresponding to small image patches. The regularizer is then learned as a critic between unpaired distributions of clean and degraded patches using a Wasserstein generative adversarial networks based energy. This yields a regularization function that can be incorporated in any image restoration problem. The efficiency of the framework is finally shown on denoising and deblurring applications.Repenser la post-production d'archives avec des méthodes à patch, variationnelles et par apprentissag
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
International audienceIn the usual non-local variational models, such as the non-local total variati...
International audienceIn the usual non-local variational models, such as the non-local total variati...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This paper presents a new variational inference framework for image restoration and a convolutional ...
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...
Several patch-based models have been proposed for image restoration in the literature. A common feat...
We propose a differentiable algorithm for image restoration inspired by the success of sparse models...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
International audienceIn the usual non-local variational models, such as the non-local total variati...
International audienceIn the usual non-local variational models, such as the non-local total variati...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This work aims to define and experimentally evaluate an adaptive strategy based on neural learning t...
This paper presents a new variational inference framework for image restoration and a convolutional ...
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...
Several patch-based models have been proposed for image restoration in the literature. A common feat...
We propose a differentiable algorithm for image restoration inspired by the success of sparse models...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...