断层重建
迭代重建
断层摄影术
反问题
人工智能
正规化(语言学)
深度学习
计算机科学
投影(关系代数)
算法
生成模型
采样(信号处理)
先验与后验
计算机视觉
物理
生成语法
数学
光学
哲学
认识论
数学分析
滤波器(信号处理)
作者
Zhen Guo,Jung Ki Song,George Barbastathis,Michael E. Glinsky,Courtenay Vaughan,Kurt W. Larson,Bradley K. Alpert,Zachary H. Levine
出处
期刊:Optics Express
[The Optical Society]
日期:2022-06-03
卷期号:30 (13): 23238-23238
被引量:4
摘要
X-ray tomography is capable of imaging the interior of objects in three dimensions non-invasively, with applications in biomedical imaging, materials science, electronic inspection, and other fields. The reconstruction process can be an ill-conditioned inverse problem, requiring regularization to obtain satisfactory results. Recently, deep learning has been adopted for tomographic reconstruction. Unlike iterative algorithms which require a distribution that is known a priori , deep reconstruction networks can learn a prior distribution through sampling the training distributions. In this work, we develop a Physics-assisted Generative Adversarial Network (PGAN), a two-step algorithm for tomographic reconstruction. In contrast to previous efforts, our PGAN utilizes maximum-likelihood estimates derived from the measurements to regularize the reconstruction with both known physics and the learned prior. Compared with methods with less physics assisting in training, PGAN can reduce the photon requirement with limited projection angles to achieve a given error rate. The advantages of using a physics-assisted learned prior in X-ray tomography may further enable low-photon nanoscale imaging.
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