Magnetic tomography is an ill-posed and ill-conditioned inverse problem since, in general, the solution is non-unique and the measured magnetic field is affected by high noise. We use a joint sparsity constraint to regularize the magnetic inverse problem. This leads to a minimization problem whose solution can be approximated by an iterative thresholded Landweber algorithm. The algorithm is proved to be convergent and an error estimate is also given. Numerical tests on a bidimensional problem show that our algorithm outperforms Tikhonov regularization when the measurements are distorted by high noise
The Magnetic Tomography (MT) is an imaging technique that aims at reconstructing an unknown electric...
This paper deals with the solution of linear inverse problems in magnetostatics. The case the autho...
Download Citation Email Print Request Permissions Magnetic induction tomography (MIT) a...
Magnetic tomography is an ill-posed and ill-conditioned inverse problem since, in general, the solut...
International audienceMany problems in applied sciences require to spatially resolve an unknown elec...
Abstract: We propose and investigate efficient numerical methods for inverse problems related to Mag...
We provide fast and accurate adaptive algorithms for the spatial resolution of current densities in ...
AbstractWe provide fast and accurate adaptive algorithms for the spatial resolution of current densi...
The magnetoencephalography (MEG) aims at reconstructing the unknown electric activity in the brain f...
This paper deals with the solution of inverse problems in magnetostatics. The cases the authors hav...
Neural current imaging aims at analyzing the functionality of the human brain through the localizati...
Neuronal current imaging aims at analyzing the functionality of the human brain through the localiza...
Magnetic particle imaging (MPI) is an emerging tomographic imaging modality with high spatial and te...
The magnetoencephalography (MEG) aims at reconstructing the unknown electric activity in the brain f...
649-653An inverse iterative algorithm for microwave imaging based on moment method solution is pres...
The Magnetic Tomography (MT) is an imaging technique that aims at reconstructing an unknown electric...
This paper deals with the solution of linear inverse problems in magnetostatics. The case the autho...
Download Citation Email Print Request Permissions Magnetic induction tomography (MIT) a...
Magnetic tomography is an ill-posed and ill-conditioned inverse problem since, in general, the solut...
International audienceMany problems in applied sciences require to spatially resolve an unknown elec...
Abstract: We propose and investigate efficient numerical methods for inverse problems related to Mag...
We provide fast and accurate adaptive algorithms for the spatial resolution of current densities in ...
AbstractWe provide fast and accurate adaptive algorithms for the spatial resolution of current densi...
The magnetoencephalography (MEG) aims at reconstructing the unknown electric activity in the brain f...
This paper deals with the solution of inverse problems in magnetostatics. The cases the authors hav...
Neural current imaging aims at analyzing the functionality of the human brain through the localizati...
Neuronal current imaging aims at analyzing the functionality of the human brain through the localiza...
Magnetic particle imaging (MPI) is an emerging tomographic imaging modality with high spatial and te...
The magnetoencephalography (MEG) aims at reconstructing the unknown electric activity in the brain f...
649-653An inverse iterative algorithm for microwave imaging based on moment method solution is pres...
The Magnetic Tomography (MT) is an imaging technique that aims at reconstructing an unknown electric...
This paper deals with the solution of linear inverse problems in magnetostatics. The case the autho...
Download Citation Email Print Request Permissions Magnetic induction tomography (MIT) a...