• Corpus ID: 216078330

MAC-ReconNet: A Multiple Acquisition Context based Convolutional Neural Network for MR Image Reconstruction using Dynamic Weight Prediction

@inproceedings{Ramanarayanan2020MACReconNetAM,
  title={MAC-ReconNet: A Multiple Acquisition Context based Convolutional Neural Network for MR Image Reconstruction using Dynamic Weight Prediction},
  author={Sriprabha Ramanarayanan and Balamurali Murugesan and Mohanasankar Sivaprakasam},
  booktitle={MIDL},
  year={2020}
}
Convolutional Neural network-based MR reconstruction methods have shown to provide fast and high quality reconstructions. A primary drawback with a CNN-based model is that it lacks flexibility and can effectively operate only for a specific acquisition context limiting practical applicability. By acquisition context, we mean a specific combination of three input settings considered namely, the anatomy under study, undersampling mask pattern and acceleration factor for undersampling. The model… 

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