Solving Inverse Problems with Deep Learning

Lexing Ying (Stanford University)

28-Jan-2021, 17:00-18:00 (3 years ago)

Abstract: This talk is about some recent progress on solving inverse problems using deep learning. Compared to traditional machine learning problems, inverse problems are often limited by the size of the training data set. We show how to overcome this issue by incorporating mathematical analysis and physics into the design of neural network architectures. We first describe neural network representations of pseudodifferential operators and Fourier integral operators. We then continue to discuss applications including electric impedance tomography, optical tomography, inverse acoustic/EM scattering, seismic imaging, and travel-time tomography.

Mathematics

Audience: researchers in the topic


International Zoom Inverse Problems Seminar, UC Irvine

Organizers: Katya Krupchyk*, Knut Solna
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