稀疏视图CT中离散与连续先验图像的影响

Sajid Abbas, Seungryong Cho
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引用次数: 0

摘要

稀疏视图CT是低剂量CT的一种可行选择,针对稀疏视图CT的图像重建算法的研究已经取得了很大进展。迭代图像重建算法是通过体素化图像和基于体素的近似x射线变换来离散连续成像模型的重建选择。先验图像已经被用来进一步减少稀疏视图CT中的视图数,但是在离散域中使用这种先验图像可能会由于近似而导致图像质量不理想。在本文中,我们提出了使用连续先验图像与离散先验图像的投影效果的比较研究。我们实现了一种全变差(TV)最小化算法,该算法可以利用先验图像知识从稀疏视图数据重建图像。结果表明,在稀疏视图CT中使用连续先验图像的投影可以获得更高质量的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effects of discrete versus continuous prior image in sparse-view CT
Sparse-view CT is a viable option for low-dose CT, and much efforts have been made to develop image reconstruction algorithms for sparse-view CT. Iterative image reconstruction algorithms are choices of reconstruction which discretize a continuous imaging model by voxelizing the image and by approximating the x-ray transform based on the voxels. Prior image has been utilized to further reduce the number of views in sparse-view CT, but the utilization of such a prior image in discrete domain may result in a suboptimal image quality due to the approximation. In this paper, we present a comparison study on the effects of using projections from a continuous prior image versus a discrete prior image. We implemented a total-variation (TV) minimization algorithm that can reconstruct the image from sparse-view data using prior image knowledge. It is shown that higher-quality images can be obtained by use of the projections of a continuous prior image in the sparse-view CT.
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