Uncertainty modelling in deep learning for safer neuroimage enhancement: Demonstration in diffusion MRI

@article{Tanno2021UncertaintyMI,
  title={Uncertainty modelling in deep learning for safer neuroimage enhancement: Demonstration in diffusion MRI},
  author={Ryutaro Tanno and Daniel E. Worrall and Enrico Kaden and Daniel C. Alexander},
  journal={NeuroImage},
  year={2021},
  volume={225}
}
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