Deep residual learning for low-order wavefront sensing in high-contrast imaging systems
Affiliation
Univ Arizona, Dept AstronUniv Arizona, Steward Observ, Tucson, AZ 85721 USA; [Barbastathis, George] MIT, Dept Mech Engn, Cambridge, MA 02139 USA; [Barbastathis, George] Singapore MIT Alliance Res & Technol SMART Ctr, 1 Create Way, Singapore 138602, Singapore
Issue Date
2020-08
Metadata
Show full item recordPublisher
OPTICAL SOC AMERCitation
Allan, G., Kang, I., Douglas, E. S., Barbastathis, G., & Cahoy, K. (2020). Deep residual learning for low-order wavefront sensing in high-contrast imaging systems. Optics Express, 28(18), 26267-26283.Journal
OPTICS EXPRESSRights
© 2020 Optical Society of America under the terms of the OSA Open Access Publishing Agreement.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Sensing and correction of low-order wavefront aberrations is critical for high-contrast astronomical imaging. State of the art coronagraph systems typically use image-based sensing methods that exploit the rejected on-axis light, such as Lyot-based low order wavefront sensors (LLOWFS); these methods rely on linear least-squares fitting to recover Zernike basis coefficients from intensity data. However, the dynamic range of linear recovery is limited. We propose the use of deep neural networks with residual learning techniques for non-linear wavefront sensing. The deep residual learning approach extends the usable range of the LLOWFS sensor by more than an order of magnitude compared to the conventional methods, and can improve closed-loop control of systems with large initial wavefront error. We demonstrate that the deep learning approach performs well even in low-photon regimes common to coronagraphic imaging of exoplanets. (C) 2020 Optical Society of America under the terms of the OSA Open Access Publishing AgreementNote
Open access journalISSN
1094-4087PubMed ID
32906902Version
Final published versionae974a485f413a2113503eed53cd6c53
10.1364/OE.397790
Scopus Count
Collections
Related articles
- Deep learning wavefront sensing.
- Authors: Nishizaki Y, Valdivia M, Horisaki R, Kitaguchi K, Saito M, Tanida J, Vera E
- Issue date: 2019 Jan 7
- Correction of non-common path aberrations in pyramid wavefront sensors to recover the optimal magnitude gain using a deformable lens.
- Authors: Quintavalla M, Bergomi M, Magrin D, Bonora S, Ragazzoni R
- Issue date: 2020 Jun 10
- Nonlinear wavefront reconstruction with convolutional neural networks for Fourier-based wavefront sensors.
- Authors: Landman R, Haffert SY
- Issue date: 2020 May 25
- Direct wavefront sensing with a plenoptic sensor based on deep learning.
- Authors: Chen H, Zhang H, He Y, Wei L, Yang J, Li X, Huang L, Wei K
- Issue date: 2023 Mar 13
- Evaluation of a global algorithm for wavefront reconstruction for Shack-Hartmann wave-front sensors and thick fundus reflectors.
- Authors: Liu T, Thibos L, Marin G, Hernandez M
- Issue date: 2014 Jan
