Parallel Fourier Ptychography reconstruction
Guocheng Zhou, Shaohui Zhang, Yao Hu, Lei Cao, Yong Huang, Qun Hao

TL;DR
This paper introduces a parallel Fourier ptychography reconstruction framework that significantly speeds up the process by utilizing multi-level parallel computing on CPU and CUDA platforms, improving efficiency in large-scale imaging.
Contribution
It proposes a novel three-level parallel computing framework for Fourier ptychography reconstruction, enhancing speed without compromising accuracy.
Findings
Framework verified with experimental results
Achieves faster reconstruction speeds
Applicable to biological sample imaging
Abstract
Fourier ptychography has attracted a wide range of focus for its ability of large space-bandwidth-produce, and quantative phase measurement. It is a typical computational imaging technique which refers to optimizing both the imaging hardware and reconstruction algorithms simultaneously. The data redundancy and inverse problem algorithms are the sources of FPM's excellent performance. But at the same time, this large amount of data processing and complex algorithms also greatly reduce the imaging speed. In this article, we propose a parallel Fourier ptychography reconstruction framework consisting of three levels of parallel computing parts and implemented it with both central processing unit (CPU) and compute unified device architecture (CUDA) platform. In the conventional FPM reconstruction framework, the sample image is divided into multiple sub-regions for separately processing…
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Taxonomy
TopicsAdvanced X-ray Imaging Techniques · Nuclear Physics and Applications · Astrophysical Phenomena and Observations
