Ill-posed linear inverse problems appear frequently in various signal processing applications. It can be very useful to have theoretical characterizations that quantify the level of ill-posedness for a given inverse problem and the degree of ambiguity that may exist about its solution. Traditional measures of ill-posedness, such as the condition number of a matrix, provide characterizations that are global in nature. While such characterizations can be powerful, they can also fail to provide full insight into situations where certain entries of the solution vector are more or less ambiguous than others. In this work, we derive novel theoretical lower- and upper-bounds that apply to individual entries of the solution vector, and are valid fo...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
The primary challenge in linear inverse problems is to design stable and robust “decoders” to recons...
International audienceThis paper is devoted to multi-dimensional inverse problems. In this setting, ...
Inverse problems arise in many applications in science and engineering. They are characterized by th...
AbstractThe classical condition number is a very rough measure of the effect of perturbations on the...
Inverse problems deal with recovering the causes for a desired or given effect. Their presence acros...
In solving a system of n linear equations in d variables Ax=b, the condition number of the (n,d) m...
Most linear inverse problems require regularization to ensure that robust and meaningful solutions c...
We address discrete nonlinear inverse problems with weighted least squares and Tikhonov regularizati...
In the analysis of ill-posed inverse problems the impact of solution smoothness on accuracy and conv...
International audienceThe primary challenge in linear inverse problems is to design stable and robus...
We study the efficiency of the approximate solution of ill-posed problems, based on discretized obse...
none6Inverse problems are concerned with the determination of causes of observed effects. Their inve...
Estimating modeling parameters based on a prescribed optimization target requires to solve an invers...
This study examines, in the framework of variational regularization methods, a multi-penalty regular...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
The primary challenge in linear inverse problems is to design stable and robust “decoders” to recons...
International audienceThis paper is devoted to multi-dimensional inverse problems. In this setting, ...
Inverse problems arise in many applications in science and engineering. They are characterized by th...
AbstractThe classical condition number is a very rough measure of the effect of perturbations on the...
Inverse problems deal with recovering the causes for a desired or given effect. Their presence acros...
In solving a system of n linear equations in d variables Ax=b, the condition number of the (n,d) m...
Most linear inverse problems require regularization to ensure that robust and meaningful solutions c...
We address discrete nonlinear inverse problems with weighted least squares and Tikhonov regularizati...
In the analysis of ill-posed inverse problems the impact of solution smoothness on accuracy and conv...
International audienceThe primary challenge in linear inverse problems is to design stable and robus...
We study the efficiency of the approximate solution of ill-posed problems, based on discretized obse...
none6Inverse problems are concerned with the determination of causes of observed effects. Their inve...
Estimating modeling parameters based on a prescribed optimization target requires to solve an invers...
This study examines, in the framework of variational regularization methods, a multi-penalty regular...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
The primary challenge in linear inverse problems is to design stable and robust “decoders” to recons...
International audienceThis paper is devoted to multi-dimensional inverse problems. In this setting, ...