Image reconstruction by Algebraic Methods (AM) outperforms the transform methods in situations where the data collection procedure is constrained by time, space, and radiation dose. AM algorithms can also be applied for the cases where these constraints are not present but their high computational and storage requirement prohibit their actual breakthrough in such cases. In the present work, we propose a novel Uniformly Sampled Polar/Cylindrical Grid (USPG/USCG) discretization scheme to reduce the computational and storage burden of algebraic methods. The symmetries of USPG/USCG are utilized to speed up the calculations of the projection coefficients. In addition, we also offer an efficient approach for USPG to Cartesian Grid (CG) transformation for the visualization. The Multiplicative Algebraic Reconstruction Technique (MART) has been used to determine the field function of the suggested grids. Experimental projections data of a frog and Cu-Lump have been exercised to validate the proposed approach. A variety of image quality measures have been evaluated to check the accuracy of the reconstruction. Results indicate that the current strategies speed up (when compared to CG-based algorithms) the reconstruction process by a factor of 2.5 and reduce the memory requirement by the factor p, the number of projections used in the reconstruction.
翻译:在数据收集程序受时间、空间和辐射剂量限制的情况下,以代数法进行图像重建比变异方法(AM)要优于变异方法。对于没有这些限制但高计算和储存要求却禁止在这些情况下实现实际突破的情况,也可以应用AM算法。在目前的工作中,我们提议采用新的新颖的《统一采样极地/环球网(USPG/USCG)计划》,以减少代数方法的计算和储存负担。利用USPG/USCG的对称来加速预测系数的计算。此外,我们还提出一种高效的方法,使USPG对卡尔提斯格网(CG)的变换为可视化提供有效的方法。多复制的代数重建技术(MART)被用来确定建议的电网的实地功能。对青蛙和Cu-Lump的实验性预测数据进行了验证。对各种图像质量措施进行了评估,以检查重建的准确性。此外,我们还提出了一种高效的方法,用于卡尔提斯格网(C)变动的当前战略的重建速度。结果显示,以2.5为基数的重新计算结果。