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Pablo Villanueva Perez

Senior lecturer

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Physics-informed 4D x-ray image reconstruction from ultra-sparse spatiotemporal data

Author

  • Zisheng Yao
  • Yuhe Zhang
  • Zhe Hu
  • Robert Klöfkorn
  • Tobias Ritschel
  • Pablo Villanueva-Perez

Summary, in English

The unprecedented x-ray flux density provided by modern x-ray sources offers new spatiotemporal possibilities for x-ray imaging of fast dynamic processes. Approaches to exploit such possibilities often result in either (i) a limited number of projections or spatial information due to limited scanning speed, as in time-resolved tomography, or (ii) a limited number of time points, as in stroboscopic imaging, making the reconstruction problem ill-posed and unlikely to be solved by classical reconstruction approaches. Four-dimensional (4D) reconstruction from such data requires sample priors, which can be included via deep learning (DL). State-of-the-art 4D reconstruction methods for x-ray imaging combine the power of artificial intelligence and the physics of x-ray propagation to tackle the challenge of sparse views. However, most approaches do not constrain the physics of the studied process, i.e. a full physical model. Here we present 4D physics-informed optimized neural implicit x-ray imaging, a novel physics-informed 4D x-ray image reconstruction method combining the full physical model and a state-of-the-art DL-based reconstruction method for 4D x-ray imaging from sparse views. We demonstrate and evaluate the potential of our approach by retrieving 4D information from ultra-sparse spatiotemporal acquisitions of simulated binary droplet collisions, a relevant fluid dynamic process. We envision that this work will open new spatiotemporal possibilities for various 4D x-ray imaging modalities, such as time-resolved x-ray tomography and more novel sparse acquisition approaches like x-ray multi-projection imaging, which will pave the way for investigations of various rapid 4D dynamics, such as fluid dynamics and composite testing.

Department/s

  • Synchrotron Radiation Research
  • Lund Laser Centre, LLC
  • LTH Profile Area: Photon Science and Technology
  • LU Profile Area: Light and Materials
  • LTH Profile Area: Nanoscience and Semiconductor Technology
  • NanoLund: Centre for Nanoscience
  • eSSENCE: The e-Science Collaboration
  • Mathematics (Faculty of Sciences)

Publishing year

2025-08-31

Language

English

Publication/Series

Measurement Science and Technology

Volume

36

Issue

8

Document type

Journal article

Publisher

IOP Publishing

Topic

  • Atom and Molecular Physics and Optics

Keywords

  • deep learning
  • four-dimensional (4D) reconstruction
  • physics-informed
  • ultra-sparse spatiotemporal data
  • ultrafast x-ray imaging

Status

Published

ISBN/ISSN/Other

  • ISSN: 0957-0233