Compressed Sensing with Invertible Generative Models and Dependent Noise

18 Mar 2020 Jay Whang Qi Lei Alexandros G. Dimakis

We study image inverse problems with invertible generative priors, specifically normalizing flow models. Our formulation views the solution as the maximum a posteriori (MAP) estimate of the image given the measurements... (read more)

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