In ptychography experiments, redundant scanning is usually required to guarantee the stable recovery, such that a huge amount of frames are generated, and thus it poses a great demand of parallel computing in order to solve this large-scale inverse problem. In this paper, we propose the overlapping Domain Decomposition Methods(DDMs) to solve the nonconvex optimization problem in ptychographic imaging. They decouple the problem defined on the whole domain into subproblems only defined on the subdomains with synchronizing information in the overlapping regions of these subdomains,thus leading to highly parallel algorithms with good load balance. More specifically, for the nonblind recovery (with known probe in advance), by enforcing the continuity of the overlapping regions for the image (sample), the nonlinear optimization model is established based on a novel smooth-truncated amplitude-Gaussian metric (ST-AGM). Such metric allows for fast calculation of the proximal mapping with closed form, and meanwhile provides the possibility for the convergence guarantee of the first-order nonconvex optimization algorithm due to its Lipschitz smoothness. Then the Alternating Direction Method of Multipliers (ADMM) is utilized to generate an efficient Overlapping Domain Decomposition based Ptychography algorithm(OD2P) for the two-subdomain domain decomposition (DD), where all subproblems can be computed with close-form solutions.Due to the Lipschitz continuity for the gradient of the objective function with ST-AGM, the convergence of the proposed OD2P is derived under mild conditions. Moreover, it is extended to more general case including multiple-subdomain DD and blind recovery. Numerical experiments are further conducted to show the performance of proposed algorithms, demonstrating good convergence speed and robustness to the noise.
翻译:在脉冲实验中,通常需要进行冗余扫描,以保证稳定的恢复,从而产生大量的框架,从而产生大量的框架,从而产生巨大的平行计算需求,以便解决这个大规模反向问题。在本文中,我们提出重叠的 Domain 分解方法(DDMs ), 以解决音频成像中的非convex优化问题。 将整个域界定的问题分解为仅定义的子问题, 与这些子数据库重叠区域的信息同步, 从而导致高度平行的计算算法, 并保持良好的负负平衡。 更具体地说, 通过执行图像( Sample) 重叠区域( DMs) 的连续性, 建立非线性优化模型, 以新颖的平滑调的 adplitment- Gaussian 度(ST- AGM) 为基础, 将整个域定义的问题分解到以封闭形式快速的状态映射, 并且同时为第一个级的不相近级的、 多级平级的DNA算算法 提供了一种平稳的合并保证, 之后, 将多式的多级平流的解解变变变的解算法进行。