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Comparison of Maximum-Likelihood Image and Wavefront Reconstruction using Conventional Image, Phase Diversity, and Lenslet Diversity Data

机译:使用常规图像,相位分集和小透镜分集数据比较最大似然图像和波前重建

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An image reconstruction approach is developed that makes joint use of image sequences produced by a conventional imaging channel and a Shack-Hartmann (lenslet) channel. Iterative maximization techniques are used to determine the reconstructed object that is most consistent with both the conventional and Shack-Hartmann raw pixel-level data. The algorithm is analogous to phase diversity, but with the wavefront diversity provided by a lenslet array rather than a simple defocus. The log-likelihood cost function is matched to the Poisson statistics of the signal and Gaussian statistics of the detector noise. Addition of a cost term that encourages the estimated object to agree with a priori knowledge of an ensemble averaged power spectrum regularizes the reconstruction. Techniques for modeling FPA sampling are developed that are convenient for performing both the forward simulation and the gradient calculations needed for the iterative maximization. The model is computationally efficient and accurately addresses all aspects of the Shack-Hartmann sensor, including subaperture cross-talk, FPA aliasing, and geometries in which the number of pixels across a subaperture is not an integer. The performance of this approach is compared with multi-frame blind deconvolution and phase diversity using simulations of image sequences produced by the visible band GEMINI sensor on the AMOS 1.6 meter telescope. It is demonstrated that wavefront information provided by the second channel improves image reconstruction by avoiding the wavefront ambiguities associated with multiframe blind deconvolution and to a lesser degree, phase diversity.
机译:开发了一种图像重建方法,该方法可以结合使用由常规成像通道和Shack-Hartmann(小透镜)通道产生的图像序列。迭代最大化技术用于确定与常规和Shack-Hartmann原始像素级数据最一致的重建对象。该算法类似于相位分集,但是具有由小透镜阵列而不是简单的散焦提供的波前分集。对数似然成本函数与信号的泊松统计量和检测器噪声的高斯统计量相匹配。增加成本项可以鼓励估计的对象与整体平均功率谱的先验知识相一致,从而使重建变得规范化。开发了用于对FPA采样建模的技术,这些技术可方便地执行正向仿真和迭代最大化所需的梯度计算。该模型具有高效的计算能力,可以准确地解决Shack-Hartmann传感器的所有方面,包括子孔径串扰,FPA混叠以及其中子孔径上的像素数不是整数的几何形状。使用由AMOS 1.6米望远镜上的可见波段GEMINI传感器产生的图像序列模拟,将这种方法的性能与多帧盲解卷积和相位分集进行了比较。已经证明,由第二通道提供的波前信息通过避免与多帧盲解卷积相关联的波前模糊性以及较小程度的相位分集而改善了图像重建。

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