Adaptive iterative thresholding algorithms for magnetoencephalography (MEG)

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摘要

We provide fast and accurate adaptive algorithms for the spatial resolution of current densities in MEG. We assume that vector components of the current densities possess a sparse expansion with respect to preassigned wavelets. Additionally, different components may also exhibit common sparsity patterns. We model MEG as an inverse problem with joint sparsity constraints, promoting the coupling of non-vanishing components. We show how to compute solutions of the MEG linear inverse problem by iterative thresholded Landweber schemes. The resulting adaptive scheme is fast, robust, and significantly outperforms the classical Tikhonov regularization in resolving sparse current densities. Numerical examples are included.

论文关键词:65J22,65K10,65T60,52A41,49M30,68U10,Magnetoencephalography,Inverse problems,Iterative thresholding,Adaptive algorithms,Matrix compression,Wavelets

论文评审过程:Received 16 January 2007, Revised 31 May 2007, Available online 28 October 2007.

论文官网地址:https://doi.org/10.1016/j.cam.2007.10.048