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**Denoising AMP for MRI reconstruction: BM3D-AMP-MRI.**
*(English)*
Zbl 1478.94034

### MSC:

94A08 | Image processing (compression, reconstruction, etc.) in information and communication theory |

47A52 | Linear operators and ill-posed problems, regularization |

49M99 | Numerical methods in optimal control |

65J22 | Numerical solution to inverse problems in abstract spaces |

### Keywords:

image reconstruction; magnetic resonance; message passing; block matching; compressed sensing; denoising
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\textit{E. M. Eksioglu} and \textit{A. K. Tanc}, SIAM J. Imaging Sci. 11, No. 3, 2090--2109 (2018; Zbl 1478.94034)

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### References:

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