4.6 Article

Diffraction tomography with a deep image prior

期刊

OPTICS EXPRESS
卷 28, 期 9, 页码 12872-12896

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OPTICAL SOC AMER
DOI: 10.1364/OE.379200

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  1. National Science Foundation [DGF-1106401]
  2. Erlangen Graduate School of Advanced Optical Technologies
  3. Deutsche Forschungsgemeinschaft
  4. National Institute Of Neurological Disorders and Stroke of the National Institutes of Health [RF1NS113287]

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We present a tomographic imaging technique, termed Deep Prior Diffraction Tomography (DP-DT), to reconstruct the 3D refractive index (RI) of thick biological samples at high resolution from a sequence of low-resolution images collected under angularly varying illumination. DP-DT processes the multi-angle data using a phase retrieval algorithm that is extended by a deep image prior (DIP), which reparameterizes the 3D sample reconstruction with an untrained, deep generative 3D convolutional neural network (CNN). We show that DP-DT effectively addresses the missing cone problem, which otherwise degrades the resolution and quality of standard 3D reconstruction algorithms. As DP-DT does not require pre-captured data or pre-training, it is not biased towards any particular dataset. Hence, it is a general technique that can be applied to a wide variety of 3D samples, including scenarios in which large datasets for supervised training would be infeasible or expensive. We applied DP-DT to obtain 3D RI maps of bead phantoms and complex biological specimens, both in simulation and experiment, and show that DP-DT produces higher-quality results than standard regularization techniques. We further demonstrate the generality of DP-DT, using two different scattering models, the first Born and multi-slice models. Our results point to the potential benefits of DP-DT for other 3D imaging modalities, including X-ray computed tomography, magnetic resonance imaging, and electron microscopy. (C) 2020 Optical Society of America under the terms of the OSA Open Access Publishing Agreement

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