2022
DOI: 10.1007/978-3-031-16452-1_44
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Interpretable Modeling and Reduction of Unknown Errors in Mechanistic Operators

Abstract: Prior knowledge about the imaging physics provides a mechanistic forward operator that plays an important role in image reconstruction, although myriad sources of possible errors in the operator could negatively impact the reconstruction solutions. In this work, we propose to embed the traditional mechanistic forward operator inside a neural function, and focus on modeling and correcting its unknown errors in an interpretable manner. This is achieved by a conditional generative model that transforms a given me… Show more

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