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On the Effect of Relaxation in the Convergence and Quality of Statistical Image Reconstruction for Emission Tomography Using Block-Iterative Algorithms

机译:使用块迭代算法的弛豫对辐射层析成像统计图像重建的收敛性和质量的影响

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Relaxation is widely recognized as a useful tool for providing convergence in block-iterative algorithms [1], [2], [6]. In the present article we give new results on the convergence of RAMLA (Row Action Maximum Likelihood Algorithm) [2], filling some important theoretical gaps. Furthermore, because RAMLA and OS-EM (Ordered Subsets - Expectation Maximization) [4] are the algorithms for statistical reconstruction currently being used in commercial emission tomography scanners, we present a comparison between them from the viewpoint of a specific imaging task. Our experiments show the importance of relaxation to improve image quality.
机译:松弛被广泛认为是在块迭代算法中提供收敛的有用工具[1],[2],[6]。在本文中,我们给出了关于RAMLA(行动作最大似然算法)[2]收敛性的新结果,填补了一些重要的理论空白。此外,由于RAMLA和OS-EM(有序子集-期望最大化)[4]是当前在商业放射断层扫描仪中使用的统计重建算法,因此,我们从特定成像任务的角度对它们进行了比较。我们的实验表明,放松对于提高图像质量非常重要。

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