Single image super-resolution is a long-lasting ill-posed problem which seeks attention from both academia and industry. The up-scaling the low-resolution images by digging out high-frequency details is still yet to be studied deeply. In the scope of this thesis we proposed a full pipeline for single image super-resolution. Our research question was to effectively estimate the degradation function of the image while capturing. The degradation function is then used to super-resolve the images with sharp edges and without artefacts. A close estimate for degradation function is indispensable for super-resolving images. \\ In this thesis we propose an effective and fast way of estimating the degradation function. Our novelty lies in the degr...
In this paper we study the usefulness of different local and global, learning-based, single-frame im...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Throughout the past several years, deep learning-based models have achieved success in super-resolut...
In many real applications, traditional super-resolution (SR) methods fail to provide high-resolution...
Super resolution (SR) algorithms typically assume that the blur kernel is known (either the Point Sp...
WOS: 000367895200014In this paper, we investigate super-resolution image restoration from multiple i...
Super resolution (SR) algorithms typically assume that the blur kernel is known (either the Point Sp...
Most leading Image Super-Resolution (SR) methods assume that input low-resolution (LR) images are bi...
In this paper, we investigate super-resolution image restoration from multiple images, which are pos...
This paper addresses the problem of single image super-resolution (SR), which consists of recovering...
Abstract. This paper presents a unifying approach to the blind deconvolution and superresolution pro...
Image super-resolution reconstructs a higher-resolution image from the observed low-resolution image...
Single-Image Super-Resolution methods typically assume that a low-resolution image is degraded from ...
A number of algorithms for image super-resolution using multiple images, have been developed over th...
In this paper we study the usefulness of different local and global, learning-based, single-frame im...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Throughout the past several years, deep learning-based models have achieved success in super-resolut...
In many real applications, traditional super-resolution (SR) methods fail to provide high-resolution...
Super resolution (SR) algorithms typically assume that the blur kernel is known (either the Point Sp...
WOS: 000367895200014In this paper, we investigate super-resolution image restoration from multiple i...
Super resolution (SR) algorithms typically assume that the blur kernel is known (either the Point Sp...
Most leading Image Super-Resolution (SR) methods assume that input low-resolution (LR) images are bi...
In this paper, we investigate super-resolution image restoration from multiple images, which are pos...
This paper addresses the problem of single image super-resolution (SR), which consists of recovering...
Abstract. This paper presents a unifying approach to the blind deconvolution and superresolution pro...
Image super-resolution reconstructs a higher-resolution image from the observed low-resolution image...
Single-Image Super-Resolution methods typically assume that a low-resolution image is degraded from ...
A number of algorithms for image super-resolution using multiple images, have been developed over th...
In this paper we study the usefulness of different local and global, learning-based, single-frame im...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...
Super-resolution (SR) reconstruction is a filtering technique that aims to combine a sequence of und...