Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation and corresponding networks with high temporal resolution. Still, no correct network detection is possible without reliable source localization. In this paper, we examine four different source localization schemes under a common Variational Bayesian framework. A Bayesian approach to the Minimum Norm Model (MNM), an Empirical Bayesian Beamformer (EBB) and two iterative Bayesian schemes (Automatic Relevance Determination (ARD) and Greedy Search (GS)) are quantitatively compared. While EBB and MNM each use a single empirical prior, ARD and GS employ a library of anatomical priors that define possible source configurations. The localization perform...
Existing source location and recovery algorithms used in magnetoen-cephalographic imaging generally ...
We have developed a Bayesian approach to the analysis of neural electromagnetic (MEG/EEG) data that ...
Brain Source localization from EEG/MEG is an ill-posed inverse problem with high uncertainty in the...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
<div><p>Electro- and magnetoencephalography allow for non-invasive investigation of human brain acti...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
In the last years several hierarchical Bayesian approaches to the MEG/EEG inverse problem have provi...
To use Electroencephalography (EEG) and Magnetoencephalography (MEG) as functional brain 3D imaging ...
To use Electroencephalography (EEG) and Magnetoencephalography (MEG) as functional brain 3D imaging ...
In the last years several hierarchical Bayesian approaches to the MEG/EEG inverse problem have provi...
Distributed linear solutions of the EEG source localisation problem are used routinely. In contrast ...
MEG/EEG brain imaging has become an important tool in neuroimaging. The reconstruction of cortical c...
MEG/EEG brain imaging has become an important tool in neuroimaging. The reconstruction of cortical c...
Existing source location and recovery algorithms used in magnetoen-cephalographic imaging generally ...
We have developed a Bayesian approach to the analysis of neural electromagnetic (MEG/EEG) data that ...
Brain Source localization from EEG/MEG is an ill-posed inverse problem with high uncertainty in the...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
<div><p>Electro- and magnetoencephalography allow for non-invasive investigation of human brain acti...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation a...
In the last years several hierarchical Bayesian approaches to the MEG/EEG inverse problem have provi...
To use Electroencephalography (EEG) and Magnetoencephalography (MEG) as functional brain 3D imaging ...
To use Electroencephalography (EEG) and Magnetoencephalography (MEG) as functional brain 3D imaging ...
In the last years several hierarchical Bayesian approaches to the MEG/EEG inverse problem have provi...
Distributed linear solutions of the EEG source localisation problem are used routinely. In contrast ...
MEG/EEG brain imaging has become an important tool in neuroimaging. The reconstruction of cortical c...
MEG/EEG brain imaging has become an important tool in neuroimaging. The reconstruction of cortical c...
Existing source location and recovery algorithms used in magnetoen-cephalographic imaging generally ...
We have developed a Bayesian approach to the analysis of neural electromagnetic (MEG/EEG) data that ...
Brain Source localization from EEG/MEG is an ill-posed inverse problem with high uncertainty in the...