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Improvement of reconstructed images in ordered subset-Bayesian reconstruction method

机译:有序子集-贝叶斯重构方法中重构图像的改进

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In ordered subsets-expectation maximization (OS-EM) the projection data are grouped into subsets of projection data. The OS algorithm can also be applied to the maximum a posteriori (MAP) method. We call it the OS-Bayesian Reconstruction (BR) method. Generally, the OS algorithm uses a fixed number of projections, so called "subset levels", and the recovered frequency components of a reconstructed image depends upon the number of projections in a subset. We propose a new method named MOS (Modified OS)-BR which modifies the number of projections for each iteration step in an OS-BR algorithm. We compared the MOS-BR with MAP-EM and OS-BR. From the results the mean absolute error was decreased stably with MOS-BR and the proposed method was extremely effective when the projection data included noise.
机译:在有序子集期望最大化(OS-EM)中,将投影数据分组为投影数据的子集。 OS算法也可以应用于最大后验(MAP)方法。我们将其称为OS-贝叶斯重构(BR)方法。通常,OS算法使用固定数量的投影,即所谓的“子集级别”,并且重建图像的恢复频率分量取决于子集中的投影数。我们提出了一种名为MOS(Modified OS)-BR的新方法,该方法可以修改OS-BR算法中每个迭代步骤的投影数量。我们将MOS-BR与MAP-EM和OS-BR进行了比较。从结果可以看出,使用MOS-BR可以稳定地降低平均绝对误差,并且当投影数据中包含噪声时,该方法非常有效。

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