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Fast Measurement of Mid-spatial-frequency Error on Optical Surfaces with Convolutional Neural Networks

机译:卷积神经网络光表面上空间频率误差的快速测量

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Mid-spatial-frequency (MSF) error on optical surfaces can do great harm to high-performance laser systems. A non-interferometric way of measuring it is phase retrieval, which has already proved its effectiveness in previous studies. However, the performance of phase retrieval is limited by its long-time iterative process and relies heavily on reliable initial solution. Therefore, in this paper, we put forward a method for fast measurement of MSF error, by introducing advanced deep learning technique into traditional computational imaging methods. Results show that the proposed method simultaneously gains an improvement on convergence speed and a reduction on residual error. The proposed method takes much fewer iterations to converge to the same error level, and has much smaller average residual error than that of the conventional algorithm in the numerical experiments.
机译:光学表面上的中间空间频率(MSF)误差对高性能激光系统产生很大的危害。 测量它的非干涉方法是相位检索,已经证明了其在先前研究中的有效性。 然而,相位检索的性能受到其长时间迭代过程的限制,并严重依赖于可靠的初始解决方案。 因此,在本文中,我们通过将先进的深度学习技术引入传统的计算成像方法,提出了一种快速测量MSF误差的方法。 结果表明,该方法同时提高了收敛速度的提高和剩余误差的降低。 所提出的方法将收敛到相同的误差水平较少,并且具有比数值实验中的传统算法的平均剩余误差更小。

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