Typical applications in signal and image processing often require the numerical solution of large–scale linear least squares problems with simple constraints, related to an m x n nonnegative matrix A, m << n. When the size of A is such that the matrix is not available in memory and only the operators of the matrix-vector products involving A and AT can be computed, forward–backward methods combined with suitable accelerating techniques are very effective; in particular, the gradient projection methods can be improved by suitable step–length rules or by an extrapolation/inertial step. In this work, we propose a further acceleration technique for both schemes, based on the use of variable metrics tailored for the considered problems. The...
Diffusion MRI is a useful probe of tissue structure. The prototypical diffusion encoding sequence, t...
Many problems encountered in machine learning and signal processing can be formulated as estimating ...
The scaled gradient projection (SGP) method is a variable metric forward-backward algorithm designed...
Typical applications in signal and image processing often require the numerical solution of large\u2...
Variable metric techniques are a crucial ingredient in many first order optimization algorithms. In ...
Fast coverage of k-space is a major concern to speed up data acquisition in Magnetic Resonance Imagi...
The recent challenge in diffusion imaging is to find acquisition schemes and analysis approaches tha...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
The recent challenge in diffusion imaging is to find acquisitionschemes and analysis approaches that...
Abstract — Collecting the maximal amount of useful informa-tion in a given scanning time is a major ...
International audienceCollecting the maximal amount of information in a given scanning time is a maj...
International audiencePerforming k-space variable density sampling is a popular way of reducing scan...
Performing k-space variable density sampling is a popular way of reducing scanning time in Magnetic ...
Diffusion MRI is a useful probe of tissue microstructure. The conventional diffusion encoding sequen...
Diffusion MRI is a useful probe of tissue structure. The prototypical diffusion encoding sequence, t...
Many problems encountered in machine learning and signal processing can be formulated as estimating ...
The scaled gradient projection (SGP) method is a variable metric forward-backward algorithm designed...
Typical applications in signal and image processing often require the numerical solution of large\u2...
Variable metric techniques are a crucial ingredient in many first order optimization algorithms. In ...
Fast coverage of k-space is a major concern to speed up data acquisition in Magnetic Resonance Imagi...
The recent challenge in diffusion imaging is to find acquisition schemes and analysis approaches tha...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
The recent challenge in diffusion imaging is to find acquisitionschemes and analysis approaches that...
Abstract — Collecting the maximal amount of useful informa-tion in a given scanning time is a major ...
International audienceCollecting the maximal amount of information in a given scanning time is a maj...
International audiencePerforming k-space variable density sampling is a popular way of reducing scan...
Performing k-space variable density sampling is a popular way of reducing scanning time in Magnetic ...
Diffusion MRI is a useful probe of tissue microstructure. The conventional diffusion encoding sequen...
Diffusion MRI is a useful probe of tissue structure. The prototypical diffusion encoding sequence, t...
Many problems encountered in machine learning and signal processing can be formulated as estimating ...
The scaled gradient projection (SGP) method is a variable metric forward-backward algorithm designed...