International audienceWe study the global and local convergence of a generic half-quadratic optimization algorithm inspired from the dual energy formulation of Geman and Reynolds [IEEE Trans. Pattern Anal. Mach. Intell., 14 (1992), pp. 367--383]. The target application is the minimization of $C^{1}$ convex and nonconvex objective functionals arising in regularized image reconstruction. Our global convergence proofs are based on a monotone convergence theorem of Meyer [J. Comput. System Sci., 12 (1976), pp. 108--121]. Compared to existing results, ours extend to a larger class of objectives and apply under weaker conditions; in particular, we cover the case where the set of stationary points is not discrete. Our local convergence results use...
Abstract. In this work we consider the regularization of vectorial data such as color images. Based ...
Abstract—Nonconvex nonsmooth regularization has advantages over convex regularization for restoring ...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
International audienceWe study the global and local convergence of a generic half-quadratic optimiza...
International audienceWe present new global convergence results for half-quadratic optimization in t...
Abstract—A popular way to restore images comprising edges is to minimize a cost function combining a...
Abstract. We address the minimization of regularized convex cost functions which are cus-tomarily us...
International audienceWe study the convergence of a generic half-quadratic algorithm for minimizing ...
We consider the reconstruction of images by minimizing regularized cost-functions. To accelerate the...
Abstract. We address the minimization of penalized least squares (PLS) criteria customarily used for...
The article addresses a wide class of image deconvolution or reconstruction situations where a sough...
In this paper, we consider the `p-`q minimization problem with 0 < p, q ≤ 2. The problem has been...
One popular method for the recovery of an ideal intensity image from corrupted or indirect measureme...
The solution to many image restoration and reconstruction problems is often defined as the minimizer...
We consider the restoration of discrete signals and images using least-squares with nonconvex regula...
Abstract. In this work we consider the regularization of vectorial data such as color images. Based ...
Abstract—Nonconvex nonsmooth regularization has advantages over convex regularization for restoring ...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
International audienceWe study the global and local convergence of a generic half-quadratic optimiza...
International audienceWe present new global convergence results for half-quadratic optimization in t...
Abstract—A popular way to restore images comprising edges is to minimize a cost function combining a...
Abstract. We address the minimization of regularized convex cost functions which are cus-tomarily us...
International audienceWe study the convergence of a generic half-quadratic algorithm for minimizing ...
We consider the reconstruction of images by minimizing regularized cost-functions. To accelerate the...
Abstract. We address the minimization of penalized least squares (PLS) criteria customarily used for...
The article addresses a wide class of image deconvolution or reconstruction situations where a sough...
In this paper, we consider the `p-`q minimization problem with 0 < p, q ≤ 2. The problem has been...
One popular method for the recovery of an ideal intensity image from corrupted or indirect measureme...
The solution to many image restoration and reconstruction problems is often defined as the minimizer...
We consider the restoration of discrete signals and images using least-squares with nonconvex regula...
Abstract. In this work we consider the regularization of vectorial data such as color images. Based ...
Abstract—Nonconvex nonsmooth regularization has advantages over convex regularization for restoring ...
We present a new mixed regularization method for image recovery. The method is based on the combinat...