We propose an automatic parameter selection strategy for variational image super-resolution of blurred and down-sampled images corrupted by additive white Gaussian noise (AWGN) with unknown standard deviation. By exploiting particular properties of the operators describing the problem in the frequency domain, our strategy selects the optimal parameter as the one optimising a suitable residual whiteness measure. Numerical tests show the effectiveness of the proposed strategy for generalised $\ell_2$-$\ell_2$ Tikhonov problems
Super-resolution restoration is the problem of restoring a high-resolution scene from multiple degra...
none4noWe propose a robust variational model for the restoration of images corrupted by blur and the...
The linear inverse problem encountered in restoration of blurred noisy images is typically solved vi...
We propose an automatic parameter selection strategy for variational image super-resolution of blurr...
International audienceWe propose an automatic parameter selection strategy for variational image sup...
We propose an automatic parameter selection strategy for variational image super-resolution of blurr...
arXiv admin note: text overlap with arXiv:2104.01001We propose an automatic parameter selection stra...
arXiv admin note: text overlap with arXiv:2104.01001International audienceWe propose an automatic pa...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
We propose a novel parameter selection strategy for variational imaging problems under Poisson noise...
We propose a robust variational model for the restoration of images corrupted by blur and the genera...
We propose a novel variational framework for image restoration based on the assumption that noise is...
In many real applications, traditional super-resolution (SR) methods fail to provide high-resolution...
Single-image super-resolution (SISR) is a resolution enhancement technique and is known as an ill-po...
Super-resolution restoration is the problem of restoring a high-resolution scene from multiple degra...
none4noWe propose a robust variational model for the restoration of images corrupted by blur and the...
The linear inverse problem encountered in restoration of blurred noisy images is typically solved vi...
We propose an automatic parameter selection strategy for variational image super-resolution of blurr...
International audienceWe propose an automatic parameter selection strategy for variational image sup...
We propose an automatic parameter selection strategy for variational image super-resolution of blurr...
arXiv admin note: text overlap with arXiv:2104.01001We propose an automatic parameter selection stra...
arXiv admin note: text overlap with arXiv:2104.01001International audienceWe propose an automatic pa...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
We propose a novel parameter selection strategy for variational imaging problems under Poisson noise...
We propose a robust variational model for the restoration of images corrupted by blur and the genera...
We propose a novel variational framework for image restoration based on the assumption that noise is...
In many real applications, traditional super-resolution (SR) methods fail to provide high-resolution...
Single-image super-resolution (SISR) is a resolution enhancement technique and is known as an ill-po...
Super-resolution restoration is the problem of restoring a high-resolution scene from multiple degra...
none4noWe propose a robust variational model for the restoration of images corrupted by blur and the...
The linear inverse problem encountered in restoration of blurred noisy images is typically solved vi...