Sub-photon accuracy noise reduction of single shot coherent diffraction pattern with atomic model trained autoencoder
Single-shot imaging with femtosecond X-ray lasers is a powerful measurement technique that can achieve both high spatial and temporal resolution. However, its accuracy has been severely limited by the difficulty of applying conventional noise-reduction processing. This study uses deep learning to va...
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Zusammenfassung: | Single-shot imaging with femtosecond X-ray lasers is a powerful measurement
technique that can achieve both high spatial and temporal resolution. However,
its accuracy has been severely limited by the difficulty of applying
conventional noise-reduction processing. This study uses deep learning to
validate noise reduction techniques, with autoencoders serving as the learning
model. Focusing on the diffraction patterns of nanoparticles, we simulated a
large dataset treating the nanoparticles as composed of many independent atoms.
Three neural network architectures are investigated: neural network,
convolutional neural network and U-net, with U-net showing superior performance
in noise reduction and subphoton reproduction. We also extended our models to
apply to diffraction patterns of particle shapes different from those in the
simulated data. We then applied the U-net model to a coherent diffractive
imaging study, wherein a nanoparticle in a microfluidic device is exposed to a
single X-ray free-electron laser pulse. After noise reduction, the
reconstructed nanoparticle image improved significantly even though the
nanoparticle shape was different from the training data, highlighting the
importance of transfer learning. |
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DOI: | 10.48550/arxiv.2403.11992 |