A multiresolution framework to MEG/EEG source imaging

@article{Gavit2001AMF,
  title={A multiresolution framework to MEG/EEG source imaging},
  author={Laurence Gavit and Sylvain Baillet and Jean-François Mangin and J{\'e}r{\'e}mie Pescatore and Line Garnero},
  journal={IEEE transactions on bio-medical engineering},
  year={2001},
  volume={48 10},
  pages={
          1080-7
        }
}
A new method based on a multiresolution approach for solving the ill-posed problem of brain electrical activity reconstruction from electroencephaloram (EEG)/magnetoencephalogram (MEG) signals is proposed in a distributed source model. At each step of the algorithm, a regularized solution to the inverse problem is used to constrain the source space on the cortical surface to be scanned at higher spatial resolution. We present the iterative procedure together with an extension of the ST-maximum… 

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