Exploration of Convolutional Neural Networks to handle non-linearity estimation issues in pyramid wavefront sensors

Weinberger C.; Guzman F.; Tapia J.; Neichel B.; Vera, E.

Keywords: adaptive optics, linearity, machine learning, deep learning, Pyramidal Wavefront Sensor

Abstract

In this work, we evaluate a especially crafted deep convolutional neural network to provide with estimations of the wavefront aberration modes directly from pyramidal wavefront sensor (PyWFS) images. Overall, the use of deep neural networks allow to improve the estimation performance as well as the operational range of the PyWFS, especially when considering cases of strong turbulence or bad seeing ratios D0/r0. Our preliminary results provide with evidence that by using neural nets, instead of the classic linear estimation methods, we can obtain a low modulation sensitivity response while extending the linearity range of the PyWFS, reducing the residual variance by a factor of 1.6 when dealing with a r0 as low as a few centimeters.

Más información

Título según WOS: Exploration of Convolutional Neural Networks to handle non-linearity estimation issues in pyramid wavefront sensors
Título según SCOPUS: Exploration of Convolutional Neural Networks to handle non-linearity estimation issues in pyramid wavefront sensors
Título de la Revista: Proceedings of SPIE - The International Society for Optical Engineering
Volumen: 12185
Editorial: SPIE
Fecha de publicación: 2022
Idioma: English
DOI:

10.1117/12.2630099

Notas: ISI, SCOPUS