Natural image statistics indicate that we should use non-convex norms for most regularization tasks in image processing and computer vision. Still, they are rarely used in practice due to the challenge of optimization. Recently, iteratively reweighed `1 minimization (IRL1) has been proposed as a way to tackle a class of non-convex functions by solving a sequence of convex `2-`1 problems. We extend the problem class to the sum of a convex function and a (non-convex) non-deceasing function applied to another convex function. The proposed algorithm sequentially optimizes suitably constructed convex majorizers. Convergence to a critical point is proved when the Kurdyka- Lojasiewicz property and additional mild restrictions hold for the objectiv...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Many computer vision problems are formulated as an objective function consisting of a sum of functio...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...
A popular strategy for determining solutions to linear least-squares problems relies on using sparsi...
A popular strategy for determining solutions to linear least-squares problems relies on using sparsi...
A popular strategy for determining solutions to linear least-squares problems relies on using sparsi...
The nonconvex and nonsmooth optimization problem has been attracting increasing attention in recent ...
Natural image statistics motivate the use of non-convex over convex regularizations for restoring im...
Natural image statistics motivate the use of non-convex over convex regularizations for restoring im...
Natural image statistics motivate the use of non-convex over convex regularizations for restoring im...
We introduce a convex non-convex (CNC) denoising variational model for restoring images corrupted by...
The minimization of a functional composed of a nonsmooth and nonadditive regularization term and a c...
Energy minimization and variational methods are widely used in image processing and computer vision,...
[eng] Image processing problems have emerged as essential in our society. Indeed, in a world where ...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Many computer vision problems are formulated as an objective function consisting of a sum of functio...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...
A popular strategy for determining solutions to linear least-squares problems relies on using sparsi...
A popular strategy for determining solutions to linear least-squares problems relies on using sparsi...
A popular strategy for determining solutions to linear least-squares problems relies on using sparsi...
The nonconvex and nonsmooth optimization problem has been attracting increasing attention in recent ...
Natural image statistics motivate the use of non-convex over convex regularizations for restoring im...
Natural image statistics motivate the use of non-convex over convex regularizations for restoring im...
Natural image statistics motivate the use of non-convex over convex regularizations for restoring im...
We introduce a convex non-convex (CNC) denoising variational model for restoring images corrupted by...
The minimization of a functional composed of a nonsmooth and nonadditive regularization term and a c...
Energy minimization and variational methods are widely used in image processing and computer vision,...
[eng] Image processing problems have emerged as essential in our society. Indeed, in a world where ...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Many computer vision problems are formulated as an objective function consisting of a sum of functio...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...