State Key Laboratory of Dynamic Testing Technology, North University of China, Taiyuan, China.
School of Information and Communication Engineering, North University of China, Taiyuan, China.
J Xray Sci Technol. 2022;30(6):1085-1097. doi: 10.3233/XST-221199.
In order to solve the problem of image quality degradation of CT reconstruction under sparse angle projection, we propose to develop and test a new sparse angle CT reconstruction method based on group sparse.
In this method, the group-based sparse representation is introduced into the statistical iterative reconstruction framework as a regularization term to construct the objective function. The group-based sparse representation no longer takes a single patch as the minimum unit of sparse representation, while it uses Euclidean distance as a similarity measure, thus it divides similar patch into groups as basic units for sparse representation. This method fully considers the local sparsity and non-local self-similarity of image. The proposed method is compared with several commonly used CT image reconstruction methods including FBP, SART, SART-TV and GSR-SART with experiments carried out on Sheep_Logan phantom and abdominal and pelvic images.
In three experiments, the visual effect of the proposed method is the best. Under 64 projection angles, the lowest RMSE is 0.004776 and the highest VIF is 0.948724. FSIM and SSIM are all higher than 0.98. Under 50 projection angles, the index of the proposed method remains achieving the best image quality.
Qualitative and quantitative results of this study demonstrate that this new proposed method can not only remove strip artifacts, but also effectively protect image details.
为了解决稀疏角投影下 CT 重建图像质量下降的问题,提出了一种基于分组稀疏的新稀疏角 CT 重建方法并进行了开发和测试。
在该方法中,将基于分组的稀疏表示作为正则项引入到统计迭代重建框架中,以构建目标函数。基于分组的稀疏表示不再以单个补丁作为稀疏表示的最小单元,而是使用欧几里得距离作为相似性度量,从而将相似的补丁划分为分组作为稀疏表示的基本单元。该方法充分考虑了图像的局部稀疏性和非局部自相似性。通过在 Sheep_Logan 体模和腹部及盆腔图像上进行实验,将所提出的方法与 FBP、SART、SART-TV 和 GSR-SART 等几种常用的 CT 图像重建方法进行了比较。
在三个实验中,所提出的方法的视觉效果最好。在 64 个投影角下,最低 RMSE 为 0.004776,最高 VIF 为 0.948724。FSIM 和 SSIM 均高于 0.98。在 50 个投影角下,该方法的指标仍然保持最佳的图像质量。
本研究的定性和定量结果表明,该新方法不仅可以去除条状伪影,而且可以有效地保护图像细节。