Phase-error estimation and image reconstruction from digital-holography data using a Bayesian framework
June 09, 2017 Β· Declared Dead Β· π Journal of The Optical Society of America A-optics Image Science and Vision
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Authors
Casey J. Pellizzari, Mark F. Spencer, Charles A. Bouman
arXiv ID
1708.01142
Category
physics.data-an
Cross-listed
cs.CV
Citations
49
Venue
Journal of The Optical Society of America A-optics Image Science and Vision
Last Checked
3 months ago
Abstract
The estimation of phase errors from digital-holography data is critical for applications such as imaging or wave-front sensing. Conventional techniques require multiple i.i.d. data and perform poorly in the presence of high noise or large phase errors. In this paper we propose a method to estimate isoplanatic phase errors from a single data realization. We develop a model-based iterative reconstruction algorithm which computes the maximum a posteriori estimate of the phase and the speckle-free object reflectance. Using simulated data, we show that the algorithm is robust against high noise and strong phase errors.
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