Title
prDeep: Robust Phase Retrieval with a Flexible Deep Network.
Abstract
Phase retrieval algorithms have become an important component in many modern computational imaging systems. For instance, in the context of ptychography and speckle correlation imaging, they enable imaging past the diffraction limit and through scattering media, respectively. Unfortunately, traditional phase retrieval algorithms struggle in the presence of noise. Progress has been made recently on more robust algorithms using signal priors, but at the expense of limiting the range of supported measurement models (e.g., to Gaussian or coded diffraction patterns). In this work we leverage the regularization-by-denoising framework and a convolutional neural network denoiser to create prDeep, a new phase retrieval algorithm that is both robust and broadly applicable. We test and validate prDeep in simulation to demonstrate that it is robust to noise and can handle a variety of system models. A MatConvNet implementation of prDeep is available at this https URL
Year
Venue
Field
2018
ICML
Phase retrieval,Ptychography,Speckle pattern,Convolutional neural network,Computational photography,Algorithm,Gaussian,Artificial intelligence,Prior probability,Diffraction,Mathematics,Machine learning
DocType
Citations 
PageRank 
Conference
3
0.40
References 
Authors
15
4
Name
Order
Citations
PageRank
Christopher A. Metzler1516.33
Philip Schniter2162093.74
Ashok Veeraraghavan3149588.93
Richard G. Baraniuk45053489.23