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Denoising and uncertainty estimation in parameter mapping with approximate Bayesian deep image priors.

Max HellströmTommy LöfstedtAnders Garpebring
Published in: Magnetic resonance in medicine (2023)
DIP successfully denoise the parameter mapping process and applies to several applications with limited hyperparameter tuning. Further, it is easy to implement since DIP methods do not use network training data. Although time-consuming, uncertainty information from MC dropout makes the method more robust and provides useful information when properly calibrated.
Keyphrases
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