Ren Zhilei, Liu Jin, Liang Yonghui
Appl Opt. 2022 Jan 10;61(2):410-416. doi: 10.1364/AO.444869.
Deconvolution from wavefront sensing (DWFS) is a high-performance image restoration technique designed to compensate for atmospheric turbulence-induced wavefront distortions. It uses simultaneously recorded short-exposure images of the object and high cadence wavefront sensor (WFS) data to estimate both the wavefronts and the object. Conventional DWFS takes no account of the temporal correlations in WFS data, which limits the reconstruction of high-spatial frequency components of wavefront distortion and then the recovery of the object. This paper takes the frozen flow hypothesis (FFH) to model the temporal evolution of atmospheric turbulence. Under this assumption, a joint estimation is performed in a Bayesian framework to simultaneously estimate the object and the turbulence phases with strict constraints imposed by WFS data and the FFH. It takes into account the temporal correlations in WFS data as well as the available a priori knowledge about the object and turbulence phases. Taking advantage of the sparse analysis prior of the object in the wavelet domain, a sparse regularization of the object based on the 2D dual-tree complex wavelet transform is proposed. Numerical experiments show that the proposed method is robust and effective for high-resolution image restoration in different seeing conditions.
基于波前传感的去卷积(DWFS)是一种高性能图像恢复技术,旨在补偿大气湍流引起的波前畸变。它使用同时记录的物体短曝光图像和高帧率波前传感器(WFS)数据来估计波前和物体。传统的DWFS没有考虑WFS数据中的时间相关性,这限制了波前畸变高空间频率分量的重建,进而限制了物体的恢复。本文采用冻结流假设(FFH)对大气湍流的时间演化进行建模。在此假设下,在贝叶斯框架中进行联合估计,以在WFS数据和FFH施加的严格约束下同时估计物体和湍流相位。它考虑了WFS数据中的时间相关性以及关于物体和湍流相位的可用先验知识。利用物体在小波域的稀疏分析先验,提出了基于二维双树复小波变换的物体稀疏正则化方法。数值实验表明,该方法在不同视宁度条件下对高分辨率图像恢复具有鲁棒性和有效性。