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A generalized two-level Bregman method with dictionary updating for non-convex magnetic resonance imaging reconstruction
Authors:Ming-hui Zhang  Xiao-yang He  Shen-yuan Du  Qie-gen Liu
Affiliation:1. Department of Electronic Information Engineering, Nanchang University, Nanchang, 330031, China
Abstract:In recent years, it has shown that a generalized thresholding algorithm is useful for inverse problems with sparsity constraints. The generalized thresholding minimizes the non-convex p-norm based function with p 1, and it penalizes small coefficients over a wider range meanwhile applies less bias to the larger coefficients.In this work, on the basis of two-level Bregman method with dictionary updating(TBMDU), we use the modified thresholding to minimize the non-convex function and propose the generalized TBMDU(GTBMDU) algorithm.The experimental results on magnetic resonance(MR) image simulations and real MR data, under a variety of sampling trajectories and acceleration factors, consistently demonstrate that the proposed algorithm can efficiently reconstruct the MR images and present advantages over the previous soft thresholding approaches.
Keywords:
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