Allan Gregory, Kang Iksung, Douglas Ewan S, Barbastathis George, Cahoy Kerri
Opt Express. 2020 Aug 31;28(18):26267-26283. doi: 10.1364/OE.397790.
Sensing and correction of low-order wavefront aberrations is critical for high-contrast astronomical imaging. State of the art coronagraph systems typically use image-based sensing methods that exploit the rejected on-axis light, such as Lyot-based low order wavefront sensors (LLOWFS); these methods rely on linear least-squares fitting to recover Zernike basis coefficients from intensity data. However, the dynamic range of linear recovery is limited. We propose the use of deep neural networks with residual learning techniques for non-linear wavefront sensing. The deep residual learning approach extends the usable range of the LLOWFS sensor by more than an order of magnitude compared to the conventional methods, and can improve closed-loop control of systems with large initial wavefront error. We demonstrate that the deep learning approach performs well even in low-photon regimes common to coronagraphic imaging of exoplanets.
低阶波前像差的传感与校正对于高对比度天文成像至关重要。目前最先进的日冕仪系统通常采用基于图像的传感方法,这些方法利用被遮挡的轴上光,例如基于洛埃的低阶波前传感器(LLOWFS);这些方法依靠线性最小二乘拟合从强度数据中恢复泽尼克基系数。然而,线性恢复的动态范围是有限的。我们提出使用带有残差学习技术的深度神经网络进行非线性波前传感。与传统方法相比,深度残差学习方法将LLOWFS传感器的可用范围扩展了一个数量级以上,并且可以改善具有大初始波前误差的系统的闭环控制。我们证明,即使在系外行星日冕仪成像常见的低光子条件下,深度学习方法也能表现良好。