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Data consistency networks for (calibration-less) accelerated parallel MR image reconstruction

25 September 2019
Jo Schlemper
Jinming Duan
C. Ouyang
C. Qin
Jose Caballero
Joseph V. Hajnal
Daniel Rueckert
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Abstract

We present simple reconstruction networks for multi-coil data by extending deep cascade of CNN's and exploiting the data consistency layer. In particular, we propose two variants, where one is inspired by POCSENSE and the other is calibration-less. We show that the proposed approaches are competitive relative to the state of the art both quantitatively and qualitatively.

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