Phase retrieval using conditional generative adversarial networks

T Uelwer, A Oberstraß… - 2020 25th International …, 2021 - ieeexplore.ieee.org
2020 25th International Conference on Pattern Recognition (ICPR), 2021ieeexplore.ieee.org
In this paper, we propose the application of conditional generative adversarial networks to
solve various phase retrieval problems. We show that including knowledge of the
measurement process at training time leads to an optimization at test time that is more robust
to initialization than existing approaches involving generative models. In addition,
conditioning the generator network on the measurements enables us to achieve much more
detailed results. We empirically demonstrate that these advantages provide meaningful …
In this paper, we propose the application of conditional generative adversarial networks to solve various phase retrieval problems. We show that including knowledge of the measurement process at training time leads to an optimization at test time that is more robust to initialization than existing approaches involving generative models. In addition, conditioning the generator network on the measurements enables us to achieve much more detailed results. We empirically demonstrate that these advantages provide meaningful solutions to the Fourier and the compressive phase retrieval problem and that our method outperforms well-established projection-based methods as well as existing methods that are based on neural networks. Like other deep learning methods, our approach is robust to noise and can therefore be useful for real-world applications.
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