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PNAS Plus: High-resolution limited-angle phase tomography of dense layered objects using deep neural networks

机译:PNAS Plus:使用深层神经网络的密集分层对象的高分辨率有限角度相位层析成像

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摘要

We present a machine learning-based method for tomographic reconstruction of dense layered objects, with range of projection angles limited to ±10. Whereas previous approaches to phase tomography generally require 2 steps, first to retrieve phase projections from intensity projections and then to perform tomographic reconstruction on the retrieved phase projections, in our work a physics-informed preprocessor followed by a deep neural network (DNN) conduct the 3-dimensional reconstruction directly from the intensity projections. We demonstrate this single-step method experimentally in the visible optical domain on a scaled-up integrated circuit phantom. We show that even under conditions of highly attenuated photon fluxes a DNN trained only on synthetic data can be used to successfully reconstruct physical samples disjoint from the synthetic training set. Thus, the need for producing a large number of physical examples for training is ameliorated. The method is generally applicable to tomography with electromagnetic or other types of radiation at all bands.
机译:我们提出了一种基于机器学习的方法,用于密集层状对象的层析成像重建,投影角度范围限制为 ± 10 。以前的相层析成像方法通常需要2个步骤,首先是从强度投影中检索相投影,然后对检索到的相投影进行层析重建,而在我们的工作中,由物理通知的预处理器再由深度神经网络(DNN)进行直接从强度投影进行3维重建。我们在放大的集成电路模型上在可见光域中实验性地演示了这种单步方法。我们表明,即使在高度衰减的光子通量的条件下,仅对合成数据进行训练的DNN也可以用于成功地重建与合成训练集不相交的物理样本。因此,减轻了产生大量用于训练的身体实例的需求。该方法通常适用于在所有频带具有电磁或其他类型辐射的层析成像。

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