Ju Guohao, Qi Xin, Ma Hongcai, Yan Changxiang
Opt Express. 2018 Nov 26;26(24):31767-31783. doi: 10.1364/OE.26.031767.
A feature-based phase retrieval wavefront sensing approach using machine learning is proposed in contrast to the conventional intensity-based approaches. Specifically, the Tchebichef moments which are orthogonal in the discrete domain of the image coordinate space are introduced to represent the features of the point spread functions (PSFs) at the in-focus and defocus image planes. The back-propagation artificial neural network, which is one of most wide applied machine learning tool, is utilized to establish the nonlinear mapping between the Tchebichef moment features and the corresponding aberration coefficients of the optical system. The Tchebichef moments can effectively characterize the intensity distribution of the PSFs. Once well trained, the neural network can directly output the aberration coefficients of the optical system to a good precision with these image features serving as the input. Adequate experiments are implemented to demonstrate the effectiveness and accuracy of proposed approach. This work presents a feasible and easy-implemented way to improve the efficiency and robustness of the phase retrieval wavefront sensing.
与传统的基于强度的方法相比,提出了一种基于特征的机器学习相位恢复波前传感方法。具体而言,引入在图像坐标空间离散域中正交的切比雪夫矩来表示焦平面和离焦图像平面上点扩散函数(PSF)的特征。反向传播人工神经网络作为应用最广泛的机器学习工具之一,用于建立切比雪夫矩特征与光学系统相应像差系数之间的非线性映射。切比雪夫矩可以有效地表征PSF的强度分布。一旦经过良好训练,神经网络可以以这些图像特征作为输入,直接高精度地输出光学系统的像差系数。进行了充分的实验来证明所提方法的有效性和准确性。这项工作提出了一种可行且易于实现的方法来提高相位恢复波前传感的效率和鲁棒性。