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深度学习波前传感

Deep learning wavefront sensing.

作者信息

Nishizaki Yohei, Valdivia Matias, Horisaki Ryoichi, Kitaguchi Katsuhisa, Saito Mamoru, Tanida Jun, Vera Esteban

出版信息

Opt Express. 2019 Jan 7;27(1):240-251. doi: 10.1364/OE.27.000240.

Abstract

We present a new class of wavefront sensors by extending their design space based on machine learning. This approach simplifies both the optical hardware and image processing in wavefront sensing. We experimentally demonstrated a variety of image-based wavefront sensing architectures that can directly estimate Zernike coefficients of aberrated wavefronts from a single intensity image by using a convolutional neural network. We also demonstrated that the proposed deep learning wavefront sensor can be trained to estimate wavefront aberrations stimulated by a point source and even extended sources.

摘要

我们通过基于机器学习扩展其设计空间,提出了一类新型的波前传感器。这种方法简化了波前传感中的光学硬件和图像处理。我们通过实验展示了多种基于图像的波前传感架构,这些架构可以使用卷积神经网络从单个强度图像直接估计像差波前的泽尼克系数。我们还证明,所提出的深度学习波前传感器可以经过训练来估计由点源甚至扩展源激发的波前像差。

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