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Non-Iterative Phase Retrieval With Cascaded Neural Networks

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arxiv 2106.10195 v1 pith:6FA7VNAL submitted 2021-06-18 eess.IV cs.CV

Non-Iterative Phase Retrieval With Cascaded Neural Networks

classification eess.IV cs.CV
keywords methodsfouriermagnitudephasedifferentlearnedneuralnon-iterative
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Fourier phase retrieval is the problem of reconstructing a signal given only the magnitude of its Fourier transformation. Optimization-based approaches, like the well-established Gerchberg-Saxton or the hybrid input output algorithm, struggle at reconstructing images from magnitudes that are not oversampled. This motivates the application of learned methods, which allow reconstruction from non-oversampled magnitude measurements after a learning phase. In this paper, we want to push the limits of these learned methods by means of a deep neural network cascade that reconstructs the image successively on different resolutions from its non-oversampled Fourier magnitude. We evaluate our method on four different datasets (MNIST, EMNIST, Fashion-MNIST, and KMNIST) and demonstrate that it yields improved performance over other non-iterative methods and optimization-based methods.

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