We study continuous-domain linear inverse problems with generalized total-variation (gTV) regularization, expressed in terms of a regularization operator L. It has recently been proved that such inverse problems have sparse spline solutions, with fewer jumps than the number of measurements. Moreover, the type of spline solely depends on L (L-splines) and is independent of the measurements. The continuous-domain inverse problem can be recast in an exact way as a finite-dimensional problem by restricting the search space to splines with knots on a uniform finite grid. However, expressing the L-spline coefficients in the dictionary basis of the Green's function of L is ill-suited for practical problems due to its infinite support. Instead, we ...
Shannon’s sampling theory and its variants provide effective solutions to the problem of reconstruct...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
In this thesis, we study the problem of recovering signals, in particular images, that approximately...
We propose a discretization method for continuous-domain linear inverse problems with multiple-order...
We study one-dimensional continuous-domain inverse problems with multiple generalized total-variatio...
Splines come in a variety of flavors that can be characterized in terms of some differential operato...
We focus on the generalized-interpolation problem. There, one reconstructs continuous-domain signals...
Splines play an important role as solutions of various interpolation and approximation problems that...
This paper deals with the resolution of inverse problems in a periodic setting or, in other terms, t...
International audienceWe study the solutions of infinite dimensional linear inverse problems over Ba...
We present an explicit formula for spline kernels; these are defined as the convolution of several B...
The issue of constructing periodic smoothing splines has been recently formulated as a controlled tw...
This paper introduces a new nonparametric estimator based on penalized regression splines for linear...
We introduce an algorithm to solve linear inverse problems regularized with the total (gradient) var...
A common problem in signal processing is to estimate the structure of an object from noisy measureme...
Shannon’s sampling theory and its variants provide effective solutions to the problem of reconstruct...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
In this thesis, we study the problem of recovering signals, in particular images, that approximately...
We propose a discretization method for continuous-domain linear inverse problems with multiple-order...
We study one-dimensional continuous-domain inverse problems with multiple generalized total-variatio...
Splines come in a variety of flavors that can be characterized in terms of some differential operato...
We focus on the generalized-interpolation problem. There, one reconstructs continuous-domain signals...
Splines play an important role as solutions of various interpolation and approximation problems that...
This paper deals with the resolution of inverse problems in a periodic setting or, in other terms, t...
International audienceWe study the solutions of infinite dimensional linear inverse problems over Ba...
We present an explicit formula for spline kernels; these are defined as the convolution of several B...
The issue of constructing periodic smoothing splines has been recently formulated as a controlled tw...
This paper introduces a new nonparametric estimator based on penalized regression splines for linear...
We introduce an algorithm to solve linear inverse problems regularized with the total (gradient) var...
A common problem in signal processing is to estimate the structure of an object from noisy measureme...
Shannon’s sampling theory and its variants provide effective solutions to the problem of reconstruct...
In this work, we introduce a function space setting for a wide class of structural/weighted total va...
In this thesis, we study the problem of recovering signals, in particular images, that approximately...