NANAOCFeb 18, 2019

Multigrid Optimization for Large-Scale Ptychographic Phase Retrieval

arXiv:1810.0562822 citationsh-index: 16
AI Analysis

For researchers in computational imaging, this method reduces computational burden of large-scale ptychography, but it is an incremental improvement over existing solvers.

This work proposes a multigrid optimization framework for large-scale ptychographic phase retrieval that accelerates convergence and outperforms the Ptychographic Iterative Engine (PIE).

Ptychography is a popular imaging technique that combines diffractive imaging with scanning microscopy. The technique consists of a coherent beam that is scanned across an object in a series of overlapping positions, leading to reliable and improved reconstructions. Ptychographic microscopes allow for large fields to be imaged at high resolution at the cost of additional computational expense. In this work, we propose a multigrid-based optimization framework to reduce the computational burdens of large-scale ptychographic phase retrieval. Our proposed method exploits the inherent hierarchical structures in ptychography through tailored restriction and prolongation operators for the object and data domains. Our numerical results show that our proposed scheme accelerates the convergence of its underlying solver and outperforms the Ptychographic Iterative Engine (PIE), a workhorse in the optics community.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes