DeepPhaseCut: Deep Relaxation in Phase for Unsupervised Fourier Phase Retrieval
Eunju Cha, Chanseok Lee, Mooseok Jang, and Jong Chul Ye

TL;DR
DeepPhaseCut introduces an unsupervised, feed-forward neural network that efficiently performs Fourier phase retrieval, outperforming existing methods by combining classical algorithms with modern deep learning in a cycleGAN framework.
Contribution
It presents a novel neural network implementation of the PhaseCut algorithm for Fourier phase retrieval within an unsupervised learning framework.
Findings
Outperforms existing Fourier phase retrieval methods in accuracy.
Operates efficiently without requiring matched training data.
Integrates classical phase retrieval algorithms with deep learning techniques.
Abstract
Fourier phase retrieval is a classical problem of restoring a signal only from the measured magnitude of its Fourier transform. Although Fienup-type algorithms, which use prior knowledge in both spatial and Fourier domains, have been widely used in practice, they can often stall in local minima. Modern methods such as PhaseLift and PhaseCut may offer performance guarantees with the help of convex relaxation. However, these algorithms are usually computationally intensive for practical use. To address this problem, we propose a novel, unsupervised, feed-forward neural network for Fourier phase retrieval which enables immediate high quality reconstruction. Unlike the existing deep learning approaches that use a neural network as a regularization term or an end-to-end blackbox model for supervised training, our algorithm is a feed-forward neural network implementation of PhaseCut algorithm…
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Taxonomy
TopicsAdvanced X-ray Imaging Techniques · Optical measurement and interference techniques
MethodsResidual Connection · GAN Least Squares Loss · PatchGAN · Batch Normalization · *Communicated@Fast*How Do I Communicate to Expedia? · Convolution · Tanh Activation · Sigmoid Activation · Instance Normalization · Cycle Consistency Loss
