Advantage of Machine Learning over Maximum Likelihood in Limited-Angle Low-Photon X-Ray Tomography

Zhen Guo, J. Song, G. Barbastathis, M. Glinsky, C. Vaughan, K. Larson, B. Alpert, Z. Levine
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引用次数: 1

Abstract

Limited-angle X-ray tomography reconstruction is an ill-conditioned inverse problem in general. Especially when the projection angles are limited and the measurements are taken in a photon-limited condition, reconstructions from classical algorithms such as filtered backprojection may lose fidelity and acquire artifacts due to the missing-cone problem. To obtain satisfactory reconstruction results, prior assumptions, such as total variation minimization and nonlocal image similarity, are usually incorporated within the reconstruction algorithm. In this work, we introduce deep neural networks to determine and apply a prior distribution in the reconstruction process. Our neural networks learn the prior directly from synthetic training samples. The neural nets thus obtain a prior distribution that is specific to the class of objects we are interested in reconstructing. In particular, we used deep generative models with 3D convolutional layers and 3D attention layers which are trained on 3D synthetic integrated circuit (IC) data from a model dubbed CircuitFaker. We demonstrate that, when the projection angles and photon budgets are limited, the priors from our deep generative models can dramatically improve the IC reconstruction quality on synthetic data compared with maximum likelihood estimation. Training the deep generative models with synthetic IC data from CircuitFaker illustrates the capabilities of the learned prior from machine learning. We expect that if the process were reproduced with experimental data, the advantage of the machine learning would persist. The advantages of machine learning in limited angle X-ray tomography may further enable applications in low-photon nanoscale imaging.
有限角度低光子x射线断层扫描中机器学习相对最大似然的优势
有限角度x射线断层成像重建一般是一个病态逆问题。特别是当投影角度有限且测量是在光子有限的条件下进行时,经典算法(如滤波反投影)的重建可能会由于缺锥问题而失去保真度并产生伪影。为了获得满意的重建结果,通常在重建算法中加入先验假设,如总变差最小化和非局部图像相似。在这项工作中,我们引入深度神经网络来确定和应用先验分布在重建过程中。我们的神经网络直接从合成训练样本中学习先验。因此,神经网络获得了一个特定于我们感兴趣重建的对象类别的先验分布。特别是,我们使用了具有3D卷积层和3D注意力层的深度生成模型,这些模型是在称为CircuitFaker的模型的3D合成集成电路(IC)数据上训练的。我们证明,当投影角度和光子预算有限时,与最大似然估计相比,我们的深度生成模型的先验可以显着提高合成数据的IC重建质量。使用来自CircuitFaker的合成IC数据训练深度生成模型说明了从机器学习中学习到的先验的能力。我们预计,如果用实验数据重现这一过程,机器学习的优势将持续存在。机器学习在有限角度x射线断层成像中的优势可能进一步促进低光子纳米成像的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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