Zhou Kevin C, Horstmeyer Roarke
Opt Express. 2020 Apr 27;28(9):12872-12896. doi: 10.1364/OE.379200.
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.
我们提出了一种断层成像技术,称为深度先验衍射断层扫描(DP-DT),用于从在角度变化照明下收集的一系列低分辨率图像中高分辨率重建厚生物样本的三维折射率(RI)。DP-DT使用一种相位检索算法处理多角度数据,该算法由深度图像先验(DIP)扩展,DIP使用未经训练的深度生成三维卷积神经网络(CNN)对三维样本重建进行重新参数化。我们表明,DP-DT有效地解决了缺失锥问题,否则该问题会降低标准三维重建算法的分辨率和质量。由于DP-DT不需要预先捕获的数据或预训练,因此它不会偏向任何特定的数据集。因此,它是一种通用技术,可应用于各种三维样本,包括监督训练的大型数据集不可行或成本高昂的情况。我们应用DP-DT在模拟和实验中获得了珠子模型和复杂生物标本的三维RI图,并表明DP-DT比标准正则化技术产生更高质量的结果。我们使用两种不同的散射模型,即第一玻恩近似模型和多层模型,进一步证明了DP-DT的通用性。我们的结果表明DP-DT对其他三维成像模态具有潜在的益处,包括X射线计算机断层扫描、磁共振成像和电子显微镜。