基于位移泊松似然的自适应稀疏建模和低剂量图像重建方法

Siqi Ye, S. Ravishankar, Y. Long, J. Fessler
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引用次数: 5

摘要

最近在计算机断层成像方面的研究集中在开发能够在不损失重建图像质量或体积的情况下减少x射线辐射剂量的技术。虽然惩罚加权最小二乘(PWLS)方法在CT图像重建中很受欢迎,但由于WLS统计模型的不准确性,它们的性能在非常低的剂量水平下会下降。本文提出了一种基于移位泊松模型的似然函数和基于图像稀疏化变换模型的数据自适应正则化器的低剂量CT图像重构新方法。稀疏化变换是从CT图像中提取的补丁数据集中预学习的。利用稀疏化变换正则化器(PL-ST)对惩罚似然重构的非凸代价函数进行了优化,并在稀疏编码步骤和图像更新步骤之间交替进行。图像更新步骤部署了一系列凸二次优化器,这些优化器使用有序子集的松弛线性化增广拉格朗日方法进行优化,减少了(昂贵的)前向和后向投影操作的数量。数值实验表明,在低剂量水平下,所提出的数据驱动PL-ST方法优于先前采用非自适应保边正则器的方法。在非常低的x射线剂量下,PL-ST也优于先前的PWLS-ST方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive sparse modeling and shifted-poisson likelihood based approach for low-dosect image reconstruction
Recent research in computed tomographic imaging has focused on developing techniques that enable reduction of the X-ray radiation dose without loss of quality of the reconstructed images or volumes. While penalized weighted-least squares (PWLS) approaches have been popular for CT image reconstruction, their performance degrades for very low dose levels due to the inaccuracy of the underlying WLS statistical model. We propose a new formulation for low-dose CT image reconstruction based on a shifted-Poisson model based likelihood function and a data-adaptive regularizer using the sparsifying transform model for images. The sparsifying transform is pre-learned from a dataset of patches extracted from CT images. The nonconvex cost function of the proposed penalized-likelihood reconstruction with sparsifying transforms regularizer (PL-ST) is optimized by alternating between a sparse coding step and an image update step. The image update step deploys a series of convex quadratic majorizers that are optimized using a relaxed linearized augmented Lagrangian method with ordered-subsets, reducing the number of (expensive) forward and backward projection operations. Numerical experiments show that for low dose levels, the proposed data-driven PL-ST approach outperforms prior methods employing a nonadaptive edge-preserving regularizer. PL-ST also outperforms prior PWLS-ST approach at very low X-ray doses.
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