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Model-based Convolutional De-Aliasing Network Learning for Parallel MR Imaging (1908.02054v1)

Published 6 Aug 2019 in eess.IV and cs.CV

Abstract: Parallel imaging has been an essential technique to accelerate MR imaging. Nevertheless, the acceleration rate is still limited due to the ill-condition and challenges associated with the undersampled reconstruction. In this paper, we propose a model-based convolutional de-aliasing network with adaptive parameter learning to achieve accurate reconstruction from multi-coil undersampled k-space data. Three main contributions have been made: a de-aliasing reconstruction model was proposed to accelerate parallel MR imaging with deep learning exploring both spatial redundancy and multi-coil correlations; a split Bregman iteration algorithm was developed to solve the model efficiently; and unlike most existing parallel imaging methods which rely on the accuracy of the estimated multi-coil sensitivity, the proposed method can perform parallel reconstruction from undersampled data without explicit sensitivity calculation. Evaluations were conducted on \emph{in vivo} brain dataset with a variety of undersampling patterns and different acceleration factors. Our results demonstrated that this method could achieve superior performance in both quantitative and qualitative analysis, compared to three state-of-the-art methods.

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Authors (5)
  1. Yanxia Chen (3 papers)
  2. Taohui Xiao (6 papers)
  3. Cheng Li (1094 papers)
  4. Qiegen Liu (67 papers)
  5. Shanshan Wang (166 papers)
Citations (23)