Li Shudong, Jiang Xiao, Shen Yuan, Stayman J Webster
Electronic Engineering Department at Tsinghua University, Beijing, 100084, China.
Biomedical Engineering Department at Johns Hopkins University, baltimore, MD, 21219, USA.
Conf Proc Int Conf Image Form Xray Comput Tomogr. 2024 Aug;2024:30-33.
There has been a great deal of work seeking to improve image quality in CT reconstruction through deep-learning-based denoising; however, there are many applications where it is spatial resolution that limits application and diagnostics. In this work, we week to improve spatial resolution in CT reconstructions through a combination of deep learning and physical modeling of detector blur. To achieve this goal, we leverage diffusion models as deep image priors to help regularize a joint deblurring and reconstruction problem. Specifically, we adopt Diffusion Posterior Sampling (DPS) as a way to combine a deep prior with a likelihood-based forward model for the measurements. The model we adopt is nonlinear since detector blur is applied after the nonlinear attenuation given by the Beer-Lambert lab. We trained a score estimator for a CT score-based prior, and then apply Bayes rule to combine this prior with a measurement likelihood score for CT reconstruction with detector blur. We demonstrate the approach in simulated data, and compare image outputs with traditional filtered-backprojection (FBP) and model-based iterative reconstruction (MBIR) across a range of exposures. We find a particular advantage of the DPS approach for low exposure data and report on major differences in the errors between DPS and classical reconstruction methods.
已经有大量工作致力于通过基于深度学习的去噪来提高CT重建中的图像质量;然而,在许多应用中,限制应用和诊断的是空间分辨率。在这项工作中,我们试图通过深度学习与探测器模糊的物理建模相结合来提高CT重建中的空间分辨率。为了实现这一目标,我们利用扩散模型作为深度图像先验,以帮助正则化联合去模糊和重建问题。具体来说,我们采用扩散后验采样(DPS)作为将深度先验与基于似然的测量前向模型相结合的方法。我们采用的模型是非线性的,因为探测器模糊是在由比尔-朗伯定律给出的非线性衰减之后应用的。我们为基于CT分数的先验训练了一个分数估计器,然后应用贝叶斯规则将这个先验与用于有探测器模糊的CT重建的测量似然分数相结合。我们在模拟数据中展示了该方法,并在一系列曝光条件下将图像输出与传统的滤波反投影(FBP)和基于模型的迭代重建(MBIR)进行了比较。我们发现DPS方法在低曝光数据方面具有特别的优势,并报告了DPS与经典重建方法之间误差的主要差异。