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学习现有但未知的逆映射的稳定近似:应用于半时圆拉东变换。

Learning a stable approximation of an existing but unknown inverse mapping: application to the half-time circular Radon transform.

作者信息

Cam Refik Mert, Villa Umberto, Anastasio Mark A

机构信息

Department of Electrical and Computer Engineering, University of Illinois Urbana-Champaign, Urbana, IL 61801, United States of America.

Oden Institute for Computational Engineering & Sciences, The University of Texas at Austin, Austin, TX 78712, United States of America.

出版信息

Inverse Probl. 2024 Aug 1;40(8):085002. doi: 10.1088/1361-6420/ad4f0a. Epub 2024 Jun 25.

Abstract

Supervised deep learning-based methods have inspired a new wave of image reconstruction methods that implicitly learn effective regularization strategies from a set of training data. While they hold potential for improving image quality, they have also raised concerns regarding their robustness. Instabilities can manifest when learned methods are applied to find approximate solutions to ill-posed image reconstruction problems for which a unique and stable inverse mapping does not exist, which is a typical use case. In this study, we investigate the performance of supervised deep learning-based image reconstruction in an alternate use case in which a stable inverse mapping is known to exist but is not yet analytically available in closed form. For such problems, a deep learning-based method can learn a stable approximation of the unknown inverse mapping that generalizes well to data that differ significantly from the training set. The learned approximation of the inverse mapping eliminates the need to employ an implicit (optimization-based) reconstruction method and can potentially yield insights into the unknown analytic inverse formula. The specific problem addressed is image reconstruction from a particular case of radially truncated circular Radon transform (CRT) data, referred to as 'half-time' measurement data. For the half-time image reconstruction problem, we develop and investigate a learned filtered backprojection method that employs a convolutional neural network to approximate the unknown filtering operation. We demonstrate that this method behaves stably and readily generalizes to data that differ significantly from training data. The developed method may find application to wave-based imaging modalities that include photoacoustic computed tomography.

摘要

基于监督深度学习的方法激发了一波新的图像重建方法浪潮,这些方法从一组训练数据中隐式地学习有效的正则化策略。虽然它们有提高图像质量的潜力,但也引发了对其鲁棒性的担忧。当将所学方法应用于为不适定图像重建问题寻找近似解时,不稳定性可能会显现出来,而对于这类问题,不存在唯一且稳定的逆映射,这是一个典型的用例。在本研究中,我们在另一种用例中研究基于监督深度学习的图像重建的性能,在这种用例中,已知存在稳定的逆映射,但尚未以封闭形式解析可得。对于此类问题,基于深度学习的方法可以学习未知逆映射的稳定近似,该近似能很好地推广到与训练集差异显著的数据。所学的逆映射近似消除了使用隐式(基于优化)重建方法的必要性,并有可能深入了解未知的解析逆公式。所解决的具体问题是从径向截断的圆形拉东变换(CRT)数据的特定情况(称为“半时”测量数据)进行图像重建。对于半时图像重建问题,我们开发并研究了一种学习滤波反投影方法,该方法采用卷积神经网络来近似未知的滤波操作。我们证明了该方法表现稳定,并且很容易推广到与训练数据差异显著的数据。所开发的方法可能适用于包括光声计算机断层扫描在内的基于波的成像模态。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c402/11197394/22d3ed6d7790/ipad4f0af1_lr.jpg

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