When deep denoising meets iterative phase retrieval
- URL: http://arxiv.org/abs/2003.01792v1
- Date: Tue, 3 Mar 2020 21:00:45 GMT
- Title: When deep denoising meets iterative phase retrieval
- Authors: Yaotian Wang, Xiaohang Sun and Jason W. Fleischer
- Abstract summary: Conventional algorithms for retrieving the phase suffer when noise is present but display global convergence when given clean data.
Here, we combine iterative methods from phase retrieval with image statistics from deep denoisers, via regularization-by-denoising.
The resulting methods inherit the advantages of each approach and outperform other noise-robust phase retrieval algorithms.
- Score: 5.639904484784126
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recovering a signal from its Fourier intensity underlies many important
applications, including lensless imaging and imaging through scattering media.
Conventional algorithms for retrieving the phase suffer when noise is present
but display global convergence when given clean data. Neural networks have been
used to improve algorithm robustness, but efforts to date are sensitive to
initial conditions and give inconsistent performance. Here, we combine
iterative methods from phase retrieval with image statistics from deep
denoisers, via regularization-by-denoising. The resulting methods inherit the
advantages of each approach and outperform other noise-robust phase retrieval
algorithms. Our work paves the way for hybrid imaging methods that integrate
machine-learned constraints in conventional algorithms.
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