Litcius/Paper detail

Deep phase retrieval for astronomical Shack–Hartmann wavefront sensors

Youming Guo, Yu Wu, Ying Li, Xuejun Rao, Changhui Rao

2021Monthly Notices of the Royal Astronomical Society43 citationsDOI

Abstract

ABSTRACT We present a high-speed deep learning-based phase retrieval approach for Shack–Hartmann wavefront sensors used in astronomical adaptive optics. It reconstructs the Zernike modal coefficients from the image captured by the wavefront sensor with a lightweight convolutional neural network. Compared to the traditional slope-based wavefront reconstruction, the proposed approach uses the image captured by the sensor directly as inputs for more high-order aberrations. Compared to the recently developed iterative phase retrieval methods, the speed is much faster with the computation time less than 1 ms for a 100-aperture configuration, which may satisfy the requirement of an astronomical adaptive optics system. Simulations have been done to demonstrate the advantages of this approach. Experiments on a 241-unit deformable-secondary-mirror AOS have also been done to validate the proposed approach.

Topics & Concepts

Zernike polynomialsWavefrontAdaptive opticsWavefront sensorPhysicsPhase retrievalComputationConvolutional neural networkOpticsPhase (matter)Aperture (computer memory)Deformable mirrorComputer visionArtificial intelligenceComputer scienceAlgorithmFourier transformAcousticsQuantum mechanicsAdaptive optics and wavefront sensingOptical measurement and interference techniquesOptical Systems and Laser Technology