Polak Adam G, Mroczka Janusz, Wysoczański Dariusz
Faculty of Electronics, Wrocław University of Science and Technology, ul. B. Prusa 53/55, 50-317 Wrocław, Poland.
Faculty of Electronics, Wrocław University of Science and Technology, ul. B. Prusa 53/55, 50-317 Wrocław, Poland.
Comput Biol Med. 2017 Feb 1;81:93-105. doi: 10.1016/j.compbiomed.2016.12.015. Epub 2016 Dec 21.
Since computed tomography (CT) was developed over 35 years ago, new mathematical ideas and computational algorithms have been continuingly elaborated to improve the quality of reconstructed images. In recent years, a considerable effort can be noticed to apply the sparse solution of underdetermined system theory to the reconstruction of CT images from undersampled data. Its significance stems from the possibility of obtaining good quality CT images from low dose projections. Among diverse approaches, total variation (TV) minimizing 2D gradients of an image, seems to be the most popular method. In this paper, a new method for CT image reconstruction via sparse gradients estimation (SGE), is proposed. It consists in estimating 1D gradients specified in four directions using the iterative reweighting algorithm. To investigate its properties and to compare it with TV and other related methods, numerical simulations were performed according to the Monte Carlo scheme, using the Shepp-Logan and more realistic brain phantoms scanned at 9-60 directions in the range from 0 to 179°, with measurement data disturbed by additive Gaussians noise characterized by the relative level of 0.1%, 0.2%, 0.5%, 1%, 2% and 5%. The accuracy of image reconstruction was assessed in terms of the relative root-mean-square (RMS) error. The results show that the proposed SGE algorithm has returned more accurate images than TV for the cases fulfilling the sparsity conditions. Particularly, it preserves sharp edges of regions representing different tissues or organs and yields images of much better quality reconstructed from a small number of projections disturbed by relatively low measurement noise.
自从35年前计算机断层扫描(CT)技术问世以来,新的数学理念和计算算法不断涌现,以提高重建图像的质量。近年来,人们显著地努力将欠定系统理论的稀疏解应用于从欠采样数据重建CT图像。其意义在于有可能从低剂量投影中获得高质量的CT图像。在各种方法中,使图像的二维梯度的总变差(TV)最小化似乎是最流行的方法。本文提出了一种通过稀疏梯度估计(SGE)进行CT图像重建的新方法。它包括使用迭代重加权算法估计四个方向上指定的一维梯度。为了研究其特性并将其与TV及其他相关方法进行比较,根据蒙特卡罗方案进行了数值模拟,使用了Shepp-Logan模型以及更逼真的脑部体模,在0至179°范围内以9至60个方向进行扫描,测量数据受到相对水平为0.1%、0.2%、0.5%、1%、2%和5%的加性高斯噪声干扰。图像重建的准确性通过相对均方根(RMS)误差进行评估。结果表明,对于满足稀疏条件的情况,所提出的SGE算法返回的图像比TV算法更准确。特别是,它保留了代表不同组织或器官区域的锐利边缘,并从受相对低测量噪声干扰的少量投影中重建出质量更好的图像。