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Rethinking Dual-Domain Undersampled MRI reconstruction: domain-specific design from the perspective of the receptive field (2303.10611v2)

Published 19 Mar 2023 in eess.IV and cs.CV

Abstract: Undersampled MRI reconstruction is crucial for accelerating clinical scanning. Dual-domain reconstruction network is performant among SoTA deep learning methods. In this paper, we rethink dual-domain model design from the perspective of the receptive field, which is needed for image recovery and K-space interpolation problems. Further, we introduce domain-specific modules for dual-domain reconstruction, namely k-space global initialization and image-domain parallel local detail enhancement. We evaluate our modules by translating a SoTA method DuDoRNet under different conventions of MRI reconstruction including image-domain, dual-domain, and reference-guided reconstruction on the public IXI dataset. Our model DuDoRNet+ achieves significant improvements over competing deep learning methods.

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Authors (2)
  1. Ziqi Gao (19 papers)
  2. S. Kevin Zhou (165 papers)
Citations (1)

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