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arxiv 2403.15448 v1 pith:T364BLTW submitted 2024-03-18 eess.SP cs.LG

What is Wrong with End-to-End Learning for Phase Retrieval?

classification eess.SP cs.LG
keywords learningbreakingdata-drivendifficultiesimagingphaseproblemsretrieval
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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For nonlinear inverse problems that are prevalent in imaging science, symmetries in the forward model are common. When data-driven deep learning approaches are used to solve such problems, these intrinsic symmetries can cause substantial learning difficulties. In this paper, we explain how such difficulties arise and, more importantly, how to overcome them by preprocessing the training set before any learning, i.e., symmetry breaking. We take far-field phase retrieval (FFPR), which is central to many areas of scientific imaging, as an example and show that symmetric breaking can substantially improve data-driven learning. We also formulate the mathematical principle of symmetry breaking.

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Cited by 1 Pith paper

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    FMPlug adapts foundation flow-matching models into practical priors for inverse problems by combining instance-guided warm-start with sharp Gaussianity regularization, showing superior results on image restoration and...