The objective of superresolution is to reconstruct a high-resolution image by using the information of a set of low-resolution images. Recently, the variational Bayesian superresolution approach has been widely used. However, these methods cannot preserve edges well while removing noises. For this reason, we propose a new image prior model and establish a Bayesian superresolution reconstruction algorithm. In the proposed prior model, the degree of interaction between pixels is adjusted adaptively by an adaptive norm, which is derived based on the local image features. Moreover, in this paper, a monotonically decreasing function is used to calculate and update the single parameter, which is used to control the severity of penalizing image gr...
This thesis aims at increasing the effective resolution of an image using a set of low resolution ima...
In this paper a new combination of image priors is introduced and applied to Bayesian image restorat...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
Abstract—In this paper the Super-Resolution (SR) image regis-tration and reconstruction problem is s...
Abstract—Image priors based on products have been recognized to offer many advantages because they a...
This paper develops a multi-frame image super-resolution approach from a Bayesian view-point by marg...
AbstractIn this paper we present a super resolution Bayesian methodology for pansharpening of multis...
In the field of image superresolution reconstruction (SRR), the prior can be employed to solve the i...
We propose a Bayesian approach for the super resolu-tion image reconstruction (SRIR) problem using a...
Abstract—In this paper a new image prior is introduced and used in image restoration. This prior is ...
We present a novel method of Bayesian image super-resolution in which marginalization is carried out...
Abstract—Super-resolution methods form high-resolution images from low-resolution images. In this pa...
Super-resolution methods form high-resolution images from low-resolution images. In this paper, we d...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
This thesis aims at increasing the effective resolution of an image using a set of low resolution ima...
In this paper a new combination of image priors is introduced and applied to Bayesian image restorat...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
Abstract—In this paper the Super-Resolution (SR) image regis-tration and reconstruction problem is s...
Abstract—Image priors based on products have been recognized to offer many advantages because they a...
This paper develops a multi-frame image super-resolution approach from a Bayesian view-point by marg...
AbstractIn this paper we present a super resolution Bayesian methodology for pansharpening of multis...
In the field of image superresolution reconstruction (SRR), the prior can be employed to solve the i...
We propose a Bayesian approach for the super resolu-tion image reconstruction (SRIR) problem using a...
Abstract—In this paper a new image prior is introduced and used in image restoration. This prior is ...
We present a novel method of Bayesian image super-resolution in which marginalization is carried out...
Abstract—Super-resolution methods form high-resolution images from low-resolution images. In this pa...
Super-resolution methods form high-resolution images from low-resolution images. In this paper, we d...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...
This thesis aims at increasing the effective resolution of an image using a set of low resolution ima...
In this paper a new combination of image priors is introduced and applied to Bayesian image restorat...
International audienceEdge-preserving Bayesian restorations using nonquadratic priors are often inef...