论文标题
X射线CT图像重建
Unified Supervised-Unsupervised (SUPER) Learning for X-ray CT Image Reconstruction
论文作者
论文摘要
基于传统模型的图像重建(MBIR)方法将向前和噪声模型与简单对象先验结合在一起。图像重建的最新机器学习方法通常涉及监督的学习或无监督的学习,这两种学习都有其优势和缺点。在这项工作中,我们提出了X射线计算机断层扫描(CT)图像重建的统一监督的无监督(超级)学习框架。提出的学习配方将基于固定点迭代分析的统一MBIR框架中的(有监督的)基于网络的基于网络的先验组合在一起,将基于学习的先验(甚至简单的分析先验)与(有监督的)基于网络的深度先验结合在一起。所提出的训练算法也是双重监督训练优化问题的近似方案,其中低级MBIR问题中的基于网络的正常器使用高层重建损失进行了优化。通过更新网络权重和基于这些权重更新重建的重建之间,可以优化培训问题。我们证明了学识渊博的超级模型对低剂量CT图像重建的功效,为此我们使用NIH AAPM Mayo Clinic低剂量CT Grand Changly Dataset进行培训和测试。在我们的实验中,我们研究了有监督的深层网络先验和无监督的基于学习或分析先验的不同组合。数值和视觉结果都表明,所提出的统一超级方法优于独立监督的基于学习的方法,迭代MBIR方法以及通过消融研究获得的Super的变化。我们还表明,所提出的算法在实践中迅速收敛。
Traditional model-based image reconstruction (MBIR) methods combine forward and noise models with simple object priors. Recent machine learning methods for image reconstruction typically involve supervised learning or unsupervised learning, both of which have their advantages and disadvantages. In this work, we propose a unified supervised-unsupervised (SUPER) learning framework for X-ray computed tomography (CT) image reconstruction. The proposed learning formulation combines both unsupervised learning-based priors (or even simple analytical priors) together with (supervised) deep network-based priors in a unified MBIR framework based on a fixed point iteration analysis. The proposed training algorithm is also an approximate scheme for a bilevel supervised training optimization problem, wherein the network-based regularizer in the lower-level MBIR problem is optimized using an upper-level reconstruction loss. The training problem is optimized by alternating between updating the network weights and iteratively updating the reconstructions based on those weights. We demonstrate the learned SUPER models' efficacy for low-dose CT image reconstruction, for which we use the NIH AAPM Mayo Clinic Low Dose CT Grand Challenge dataset for training and testing. In our experiments, we studied different combinations of supervised deep network priors and unsupervised learning-based or analytical priors. Both numerical and visual results show the superiority of the proposed unified SUPER methods over standalone supervised learning-based methods, iterative MBIR methods, and variations of SUPER obtained via ablation studies. We also show that the proposed algorithm converges rapidly in practice.