This thesis examines the concept of image self-similarity and provides solutions to various associated inverse problems such as resolution enhancement and missing fractal codes. In general, many real-world inverse problems are ill-posed, mainly because of the lack of existence of a unique solution. The procedure of providing acceptable unique solutions to such problems is known as regularization. The concept of image prior, which has been of crucial importance in image modelling and processing, has also been important in solving inverse problems since it algebraically translates to the regularization procedure. Indeed, much recent progress in imaging has been due to advances in the formulation and practice of regularization. This, ...
The recent developments in image and video denoising have brought a new generation of filtering algo...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
Inverse problems in the imaging sciences encompass a variety of applications. The primary problem o...
This thesis has two related goals: the first involves the concept of self-similarity of images. Ima...
Self-similarity has played an important role in mathemat-ics and some areas of science, most notably...
International audienceThe non-local means filter (NL-means) is very efficient in restoring images de...
The single image super-resolution problem entails estimating a high-resolution version of a low-reso...
This thesis explores graph-based regularization techniques for inverse problems in imaging and visio...
Many branches of science and engineering are concerned with the problem of recording signals from ph...
Traditional super-resolution methods produce a clean high-resolution image from several observed deg...
Inverse problems deal with recovering the causes for a desired or given effect. Their presence acros...
Abstract. Numerical experiments indicate that images, in general, pos-sess a considerable degree of ...
Image reconstruction is a key problem in numerous applications of computer vision and medical imagin...
The difficult task of finding a recurrent representation of an input shape is called the inverse pr...
Inverse problems involve estimating parameters or data from inadequate observations; the observation...
The recent developments in image and video denoising have brought a new generation of filtering algo...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
Inverse problems in the imaging sciences encompass a variety of applications. The primary problem o...
This thesis has two related goals: the first involves the concept of self-similarity of images. Ima...
Self-similarity has played an important role in mathemat-ics and some areas of science, most notably...
International audienceThe non-local means filter (NL-means) is very efficient in restoring images de...
The single image super-resolution problem entails estimating a high-resolution version of a low-reso...
This thesis explores graph-based regularization techniques for inverse problems in imaging and visio...
Many branches of science and engineering are concerned with the problem of recording signals from ph...
Traditional super-resolution methods produce a clean high-resolution image from several observed deg...
Inverse problems deal with recovering the causes for a desired or given effect. Their presence acros...
Abstract. Numerical experiments indicate that images, in general, pos-sess a considerable degree of ...
Image reconstruction is a key problem in numerous applications of computer vision and medical imagin...
The difficult task of finding a recurrent representation of an input shape is called the inverse pr...
Inverse problems involve estimating parameters or data from inadequate observations; the observation...
The recent developments in image and video denoising have brought a new generation of filtering algo...
In super-resolution (SR) reconstruction of images, regularization becomes crucial when insufficient ...
Inverse problems in the imaging sciences encompass a variety of applications. The primary problem o...