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Deep learning based wavefront sensor for complex wavefront detection in adaptive optical microscopes

机译:基于深入学习的波前传感器,用于自适应光学显微镜中的复杂波前检测

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The Shack-Hartmann wavefront sensor (SHWS) is an essential tool for wavefront sensing in adaptive optical microscopes. However, the distorted spots induced by the complex wavefront challenge its detection performance. Here, we propose a deep learning based wavefront detection method which combines point spread function image based Zernike coefficient estimation and wavefront stitching. Rather than using the centroid displacements of each micro-lens, this method first estimates the Zernike coefficients of local wavefront distribution over each micro-lens and then stitches the local wavefronts for reconstruction. The proposed method can offer low root mean square wavefront errors and high accuracy for complex wavefront detection, and has potential to be applied in adaptive optical microscopes.
机译:Shack-Hartmann波前传感器(SHWS)是自适应光学显微镜中的波前感测的必备工具。 然而,复杂波前诱导的扭曲斑点挑战其检测性能。 这里,我们提出了一种基于深度学习的波前检测方法,其组合了基于点扩展函数图像的Zernike系数估计和波前缝合。 该方法而不是使用每个微透镜的质心位移,首先估计在每个微透镜上局部波前分布的Zernike系数,然后缝合局部波前进行重建。 该方法可以提供低根均方波前误差和复杂波前检测的高精度,并且具有在自适应光学显微镜中应用的电位。

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