Focal Plane Wavefront Sensing using Machine Learning: Performance of Convolutional Neural Networks compared to Fundamental Limits
G. Orban de Xivry, M. Quesnel, P.-O. Vanberg, O. Absil, G. Louppe

TL;DR
This paper demonstrates that deep convolutional neural networks can effectively perform focal plane wavefront sensing, reaching near photon noise limits and outperforming traditional algorithms in various simulated conditions.
Contribution
It introduces CNN architectures for NCPA measurement in FPWFS, achieving near-optimal performance and robustness in idealized simulations.
Findings
CNN models reach photon noise limit in wavefront error estimation.
CNNs outperform iterative phase retrieval algorithms.
Models are robust across different noise levels and aberration amplitudes.
Abstract
Focal plane wavefront sensing (FPWFS) is appealing for several reasons. Notably, it offers high sensitivity and does not suffer from non-common path aberrations (NCPA). The price to pay is a high computational burden and the need for diversity to lift any phase ambiguity. If those limitations can be overcome, FPWFS is a great solution for NCPA measurement, a key limitation for high-contrast imaging, and could be used as adaptive optics wavefront sensor. Here, we propose to use deep convolutional neural networks (CNNs) to measure NCPA based on focal plane images. Two CNN architectures are considered: ResNet-50 and U-Net which are used respectively to estimate Zernike coefficients or directly the phase. The models are trained on labelled datasets and evaluated at various flux levels and for two spatial frequency contents (20 and 100 Zernike modes). In these idealized simulations we…
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