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Three-dimensional coherent X-ray diffraction imaging via deep convolutional neural networks

Physics

Three-dimensional coherent X-ray diffraction imaging via deep convolutional neural networks

L. Wu, S. Yoo, et al.

Discover a groundbreaking 3D machine learning model that enhances phase retrieval accuracy in coherent X-ray diffraction imaging, developed by leading experts Longlong Wu, Shinjae Yoo, Ana F. Suzana, Tadesse A. Assefa, Jiecheng Diao, Ross J. Harder, Wonsuk Cha, and Ian K. Robinson. This innovative approach surpasses traditional methods, offering rapid and precise results for real-time experiments.

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~3 min • Beginner • English
Abstract
As a critical component of coherent X-ray diffraction imaging (CDI), phase retrieval has been extensively applied in X-ray structural science to recover the 3D morphological information inside measured particles. Despite meeting all the oversampling requirements of Sayre and Shannon, current phase retrieval approaches still have trouble achieving a unique inversion of experimental data in the presence of noise. Here, we propose to overcome this limitation by incorporating a 3D Machine Learning (ML) model combining (optional) supervised learning with transfer learning. The trained ML model can rapidly provide an immediate result with high accuracy which could benefit real-time experiments, and the predicted result can be further refined with transfer learning. More significantly, the proposed ML model can be used without any prior training to learn the missing phases of an image based on minimization of an appropriate ‘loss function’ alone. We demonstrate significantly improved performance with experimental Bragg CDI data over traditional iterative phase retrieval algorithms.
Publisher
npj Computational Materials
Published On
Oct 28, 2021
Authors
Longlong Wu, Shinjae Yoo, Ana F. Suzana, Tadesse A. Assefa, Jiecheng Diao, Ross J. Harder, Wonsuk Cha, Ian K. Robinson
Tags
3D machine learning
phase retrieval
coherent X-ray diffraction
Bragg CDI data
supervised learning
transfer learning
loss function
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