DOE PAGES title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Randomized probe imaging through deep k-learning

Journal Article · · Optics Express
DOI: https://doi.org/10.1364/OE.445498 · OSTI ID:1842559

Randomized probe imaging (RPI) is a single-frame diffractive imaging method that uses highly randomized light to reconstruct the spatial features of a scattering object. The reconstruction process, known as phase retrieval, aims to recover a unique solution for the object without measuring the far-field phase information. Typically, reconstruction is done via time-consuming iterative algorithms. In this work, we propose a fast and efficient deep learning based method to reconstruct phase objects from RPI data. The method, which we call deep k-learning, applies the physical propagation operator to generate an approximation of the object as an input to the neural network. This way, the network no longer needs to parametrize the far-field diffraction physics, dramatically improving the results. Deep k-learning is shown to be computationally efficient and robust to Poisson noise. The advantages provided by our method may enable the analysis of far larger datasets in photon starved conditions, with important applications to the study of dynamic phenomena in physical science and biological engineering.

Sponsoring Organization:
USDOE
Grant/Contract Number:
SC0021939
OSTI ID:
1842559
Journal Information:
Optics Express, Journal Name: Optics Express Journal Issue: 2 Vol. 30; ISSN 1094-4087; ISSN OPEXFF
Publisher:
Optical Society of AmericaCopyright Statement
Country of Publication:
United States
Language:
English

References (41)

Diffraction-Enhanced Imaging of Musculoskeletal Tissues Using a Conventional X-Ray Tube journal August 2009
Imaging of Biological Materials and Cells by X-ray Scattering and Diffraction journal August 2017
Phase recovery and holographic image reconstruction using deep learning in neural networks journal October 2017
Coherent lensless X-ray imaging journal November 2010
Probing 10 μK stability and residual drifts in the cross-polarized dual-mode stabilization of single-crystal ultrahigh-Q optical resonators journal January 2019
Acousto-optic modulation of photonic bound state in the continuum journal January 2020
Dynamical machine learning volumetric reconstruction of objects’ interiors from limited angular views journal April 2021
End-to-end lung cancer screening with three-dimensional deep learning on low-dose chest computed tomography journal May 2019
Three-dimensional imaging of integrated circuits with macro- to nanoscale zoom journal October 2019
High-resolution limited-angle phase tomography of dense layered objects using deep neural networks journal September 2019
Low Photon Count Phase Retrieval Using Deep Learning journal December 2018
Lensless Diffractive Imaging Using Tabletop Coherent High-Harmonic Soft-X-Ray Beams journal August 2007
Phase Retrieval with Application to Optical Imaging: A contemporary overview journal May 2015
Generative Adversarial Networks: An Overview journal January 2018
Loss Functions for Image Restoration With Neural Networks journal March 2017
Fringe Pattern Improvement and Super-Resolution Using Deep Learning in Digital Holography journal November 2019
Phase Retrieval via Wirtinger Flow: Theory and Algorithms journal April 2015
Neural Style Transfer: A Review journal November 2020
ImageNet classification with deep convolutional neural networks journal May 2017
Deep-learning tomography journal January 2018
Phase retrieval algorithms: a comparison journal January 1982
Deep-learning-generated holography journal January 2018
Randomized Probe Imaging through Deep K-Learning
  • Guo, Zhen; Levitan, Abraham; Barbastathis, George
  • Computational Optical Sensing and Imaging, OSA Imaging and Applied Optics Congress 2021 (3D, COSI, DH, ISA, pcAOP) https://doi.org/10.1364/COSI.2021.CTh7A.6
conference January 2021
Phase retrieval with random phase illumination journal January 2012
TomoGAN: low-dose synchrotron x-ray tomography with generative adversarial networks: discussion journal January 2020
Nanoscale Fresnel coherent diffraction imaging tomography using ptychography journal January 2012
Ptychographic overlap constraint errors and the limits of their numerical recovery using conjugate gradient descent methods journal January 2014
Deep learning approach for Fourier ptychography microscopy journal January 2018
Shaping coherent x-rays with binary optics journal January 2019
Fourier ptychographic microscopy reconstruction with multiscale deep residual network journal January 2019
On the interplay between physical and content priors in deep learning for computational imaging journal January 2020
Three-dimensional single-shot ptychography journal January 2020
Single-frame far-field diffractive imaging with randomized illumination journal January 2020
Phase extraction neural network (PhENN) with coherent modulation imaging (CMI) for phase retrieval at low photon counts journal January 2020
DeepCGH: 3D computer-generated holography using deep learning journal January 2020
Single-shot ptychography journal December 2015
Lensless computational imaging through deep learning journal January 2017
Single-shot phase retrieval via Fourier ptychographic microscopy journal January 2018
Reliable deep-learning-based phase imaging with uncertainty quantification journal January 2019
On the use of deep learning for computational imaging journal January 2019
Replication Data for: Randomized probe imaging through deep k-learning dataset January 2021