论文标题

具有全息图和未经训练的先验的阶段检索:应对低光子纳米级成像的挑战

Phase Retrieval with Holography and Untrained Priors: Tackling the Challenges of Low-Photon Nanoscale Imaging

论文作者

Lawrence, Hannah, Barmherzig, David A., Li, Henry, Eickenberg, Michael, Gabrié, Marylou

论文摘要

相位检索是从仅大幅度傅立叶测量值中恢复信号的反问题,并构成了许多成像方式,例如相干衍射成像(CDI)。该设置的一种称为全息图的变体包括一个参考对象,该对象在收集测量之前与感兴趣的样品相邻。所得的逆问题(称为全息相检索)众所周知,相对于原始问题,问题的问题改善了。这种创新,即全息CDI,在纳米级至关重要,在该纳米级,诸如病毒,蛋白质和晶体之类的成像标本需要低光子测量。这些数据被泊松射击噪声严重损坏,并且通常也缺乏低频内容。在这项工作中,我们介绍了一个无数据集的深度学习框架,以适应这些挑战的全息阶段检索。我们方法的关键要素是将物理前向模型明确,灵活地融合到自动分化过程中,Poisson log-likelihienhighood目标函数以及可选的未经训练的深层图像之前。我们在现实条件下进行广泛的评估。与竞争的经典方法相比,我们的方法从较高的噪声水平中恢复了信号,并且对次优参考设计以及观测值低频率的较大缺失区域更具弹性。最后,我们表明这些特性将其延续到光波长上获得的实验数据。据我们所知,这是第一项考虑用于全息阶段检索的无数据集的机器学习方法。

Phase retrieval is the inverse problem of recovering a signal from magnitude-only Fourier measurements, and underlies numerous imaging modalities, such as Coherent Diffraction Imaging (CDI). A variant of this setup, known as holography, includes a reference object that is placed adjacent to the specimen of interest before measurements are collected. The resulting inverse problem, known as holographic phase retrieval, is well-known to have improved problem conditioning relative to the original. This innovation, i.e. Holographic CDI, becomes crucial at the nanoscale, where imaging specimens such as viruses, proteins, and crystals require low-photon measurements. This data is highly corrupted by Poisson shot noise, and often lacks low-frequency content as well. In this work, we introduce a dataset-free deep learning framework for holographic phase retrieval adapted to these challenges. The key ingredients of our approach are the explicit and flexible incorporation of the physical forward model into an automatic differentiation procedure, the Poisson log-likelihood objective function, and an optional untrained deep image prior. We perform extensive evaluation under realistic conditions. Compared to competing classical methods, our method recovers signal from higher noise levels and is more resilient to suboptimal reference design, as well as to large missing regions of low frequencies in the observations. Finally, we show that these properties carry over to experimental data acquired on optical wavelengths. To the best of our knowledge, this is the first work to consider a dataset-free machine learning approach for holographic phase retrieval.

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