Abstract Group sparsity has shown great potential in various low-level vision tasks (e.g, image denoising, deblurring and inpainting). In this paper, we propose a new prior model for image denoising via group sparsity residual constraint (GSRC). To enhance the performance of group sparse-based image denoising, the concept of group sparsity residual is proposed, and thus, the problem of image denoising is translated into one that reduces the group sparsity residual. To reduce the residual, we first obtain some good estimation of the group sparse coefficients of the original image by the first-pass estimation of noisy image, and then centralize the group sparse coefficients of noisy image to the estimation. Experimental results have demonstr...
International audienceThis paper introduces a novel and versatile group sparsity prior for denoising...
This paper introduces a novel and versatile group sparsity prior for denoising and to regularize inv...
Traditional patch-based sparse representation modeling of natural images usually suffer from two pro...
Group sparse residual constraint with non-local priors (GSRC) has achieved great success in image re...
Group sparse residual constraint with non-local priors (GSRC) has achieved great success in image re...
Abstract Nonlocal image representation has been successfully used in many image-related inverse pro...
Abstract Sparse coding has achieved a great success in various image processing studies. However, t...
Image restoration, as a fundamental research topic of image processing, is to reconstruct the origin...
Image restoration, as a fundamental research topic of image processing, is to reconstruct the origin...
Image restoration, as a fundamental research topic of image processing, is to reconstruct the origin...
Sparse coding has achieved great success in various image restoration tasks. However, if the sparse ...
Sparse coding has achieved great success in various image restoration tasks. However, if the sparse ...
Denoising images subjected to Gaussian and Poisson noise has attracted attention in many areas of im...
Abstract Self‐similarity, a prior of natural images, has attracted much attention. The attribute mea...
To alleviate the conflict between bit reduction and quality preservation, deblocking as a post-proce...
International audienceThis paper introduces a novel and versatile group sparsity prior for denoising...
This paper introduces a novel and versatile group sparsity prior for denoising and to regularize inv...
Traditional patch-based sparse representation modeling of natural images usually suffer from two pro...
Group sparse residual constraint with non-local priors (GSRC) has achieved great success in image re...
Group sparse residual constraint with non-local priors (GSRC) has achieved great success in image re...
Abstract Nonlocal image representation has been successfully used in many image-related inverse pro...
Abstract Sparse coding has achieved a great success in various image processing studies. However, t...
Image restoration, as a fundamental research topic of image processing, is to reconstruct the origin...
Image restoration, as a fundamental research topic of image processing, is to reconstruct the origin...
Image restoration, as a fundamental research topic of image processing, is to reconstruct the origin...
Sparse coding has achieved great success in various image restoration tasks. However, if the sparse ...
Sparse coding has achieved great success in various image restoration tasks. However, if the sparse ...
Denoising images subjected to Gaussian and Poisson noise has attracted attention in many areas of im...
Abstract Self‐similarity, a prior of natural images, has attracted much attention. The attribute mea...
To alleviate the conflict between bit reduction and quality preservation, deblocking as a post-proce...
International audienceThis paper introduces a novel and versatile group sparsity prior for denoising...
This paper introduces a novel and versatile group sparsity prior for denoising and to regularize inv...
Traditional patch-based sparse representation modeling of natural images usually suffer from two pro...