An efficient approach for solving an inverse problem is to define the recovered signal/image as a minimizer of a penalized criterion which is often split in a sum of simpler functions composed with linear operators. In the situations of practical interest, these functions may be neither convex nor smooth. In addition, large scale optimization problems often have to be faced. This thesis is devoted to the design of new methods to solve such difficult minimization problems, while paying attention to computational issues and theoretical convergence properties. A first idea to build fast minimization algorithms is to make use of a preconditioning strategy by adapting, at each iteration, the underlying metric. We incorporate this technique in th...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
An efficient approach for solving an inverse problem is to define the recovered signal/image as a mi...
In this thesis, we are interested in sequential prediction problems. As a previsionist, we seek to p...
The solution to many image restoration and reconstruction problems is often defined as the minimizer...
We worked in this thesis on a classical inverse problem in the petroleum industry, historymatching. ...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
We focused on real-time embedded critical systems (RTECS) which present different problems: critical...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
Many combinatorial optimization problems are hard to solve and in many cases, exact approaches are i...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
An efficient approach for solving an inverse problem is to define the recovered signal/image as a mi...
In this thesis, we are interested in sequential prediction problems. As a previsionist, we seek to p...
The solution to many image restoration and reconstruction problems is often defined as the minimizer...
We worked in this thesis on a classical inverse problem in the petroleum industry, historymatching. ...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
We focused on real-time embedded critical systems (RTECS) which present different problems: critical...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
To meet the increasingly heterogeneous needs of applications (in terms of power and efficiency), thi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
Many combinatorial optimization problems are hard to solve and in many cases, exact approaches are i...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...
This work presents an ``inverse problems'' approach for reconstruction in two different fields: digi...