Integrating Generative and Physics-Based Models for Ptychographic Imaging with Uncertainty Quantification

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作者
Ekmekci, Canberk [1 ]
Bicer, Tekin [2 ]
Di, Zichao Wendy [2 ]
Deng, Junjing [2 ]
Cetin, Mujdat [1 ]
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[1] University of Rochester, Rochester,NY,14627, United States
[2] Argonne National Laboratory, Lemont,IL,60439, United States
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摘要
Markov chains
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