DocumentCode
110863
Title
Compressive Phase Retrieval via Generalized Approximate Message Passing
Author
Schniter, Philip ; Rangan, Sundeep
Author_Institution
Dept. of Electr. & Comput. Eng., Ohio State Univ., Columbus, OH, USA
Volume
63
Issue
4
fYear
2015
fDate
Feb.15, 2015
Firstpage
1043
Lastpage
1055
Abstract
In phase retrieval, the goal is to recover a signal x ∈ CN from the magnitudes of linear measurements Ax ∈ CM. While recent theory has established that M ≈ 4N intensity measurements are necessary and sufficient to recover generic x, there is great interest in reducing the number of measurements through the exploitation of sparse mbi x, which is known as compressive phase retrieval. In this work, we detail a novel, probabilistic approach to compressive phase retrieval based on the generalized approximate message passing (GAMP) algorithm. We then present a numerical study of the proposed PR-GAMP algorithm, demonstrating its excellent phase-transition behavior, robustness to noise, and runtime. Our experiments suggest that approximately M ≥ 2 Klog2(N/K) intensity measurements suffice to recover K-sparse Bernoulli-Gaussian signals for mbi A with i.i.d Gaussian entries and K ≪ N. Meanwhile, when recovering a 6678-sparse 65536-pixel grayscale image from 32768 randomly masked and blurred Fourier intensity measurements at 30 dB measurement SNR, PR-GAMP achieved an output SNR of no less than 28 dB in all of 100 random trials, with a median runtime of only 7.3 seconds. Compared to the recently proposed CPRL, sparse-Fienup, and GESPAR algorithms, our experiments suggest that PR-GAMP has a superior phase transition and orders-of-magnitude faster runtimes as the sparsity and problem dimensions increase.
Keywords
Gaussian processes; compressed sensing; image retrieval; intensity measurement; message passing; CPRL; GESPAR algorithms; PR-GAMP algorithm; SNR; blurred Fourier intensity measurement; compressive phase retrieval; generalized approximate message passing; grayscale image recovery; linear measurement; phase transition; probabilistic approach; sparse Bernoulli-Gaussian signal recovery; Approximation algorithms; Belief propagation; Damping; Noise; Noise measurement; Phase measurement; Signal processing algorithms; Belief propagation; compressed sensing; estimation; phase retrieval;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2386294
Filename
6998861
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