2016
DOI: 10.1016/j.neuroimage.2016.05.064
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Imaging brain source extent from EEG/MEG by means of an iteratively reweighted edge sparsity minimization (IRES) strategy

Abstract: Estimating extended brain sources using EEG/MEG source imaging techniques is challenging. EEG and MEG have excellent temporal resolution at millisecond scale but their spatial resolution is limited due to the volume conduction effect. We have exploited sparse signal processing techniques in this study to impose sparsity on the underlying source and its transformation in other domains (mathematical domains, like spatial gradient). Using an iterative reweighting strategy to penalize locations that are less likel… Show more

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Cited by 68 publications
(45 citation statements)
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“…If further decreasing the voxel number to be 2000, the computation time is reduced to 1.2 s, or 0.9 s with pre-computed matrices. Compared to relevant work (Haufe et al, 2008; Chang et al, 2010; Sohrabpour et al, 2016), the proposed algorithm has reduced the computational cost significantly.…”
Section: Methodsmentioning
confidence: 90%
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“…If further decreasing the voxel number to be 2000, the computation time is reduced to 1.2 s, or 0.9 s with pre-computed matrices. Compared to relevant work (Haufe et al, 2008; Chang et al, 2010; Sohrabpour et al, 2016), the proposed algorithm has reduced the computational cost significantly.…”
Section: Methodsmentioning
confidence: 90%
“…On the other hand, if choosing α 1 , α 2 and β to be 0, it becomes the L1 method. In addition, some relevant methods that combine two regularization terms (Haufe et al, 2008; Chang et al, 2010; Sohrabpour et al, 2016) usually describe the data fidelity by using an inequality constraint. Instead, we integrate this term into our objective function.…”
Section: Discussionmentioning
confidence: 99%
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