Litcius/Paper detail

Using a deep learning algorithm in image-based wavefront sensing: determining the optimum number of Zernike terms

Jafar Bakhtiar Shohani, Morteza Hajimahmoodzadeh, Hamidreza Fallah

2023Optics Continuum18 citationsDOIOpen Access PDF

Abstract

The turbulent atmosphere usually degrades the quality of images taken on Earth. Random variations of the refractive index of light cause distortion of wavefronts propagating to ground-based telescopes. Compensating these distortions is usually accomplished by adaptive optics (AO) approaches. The control unit of AO adjusts the phase corrector, such as deformable mirrors, based on the incoming turbulent wavefront. This can be done by different algorithms. Usually, these algorithms encounter real-time wavefront compensation challenges. Although many studies have been conducted to overcome these issues, we have proposed a method, based on the convolutional neural network (CNN) as a branch of deep learning (DL) for sensor-less AO. To this objective, thousands of wavefronts, their Zernike coefficients, and corresponding intensity patterns in diverse conditions of turbulence are generated and fed into the CNN to predict the wavefront of new intensity patterns. The predictions are done for considering the different number of Zernike terms, and the optimum number is achieved by comparing wavefront errors.

Topics & Concepts

Zernike polynomialsWavefrontAdaptive opticsDeformable mirrorAlgorithmDistortion (music)Wavefront sensorComputer sciencePhase distortionOpticsStrehl ratioArtificial intelligencePhysicsComputer visionFilter (signal processing)AmplifierComputer networkBandwidth (computing)Adaptive optics and wavefront sensingOptical Wireless Communication TechnologiesAdvanced optical system design