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Hierarchical regularization for edge-preserving reconstruction of PET images

机译:用于PET图像保留边缘重建的分层正则化

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摘要

The data in PET emission and transmission tomography and in low dose X-ray tomography consist of counts of photons originating from random events. The need to model the data as a Poisson process poses a challenge for traditional integral geometry-based reconstruction algorithms. Although qualitative a priori information of the target may be available, it may be difficult to encode it as a regularization functional in a minimization algorithm. This is the case, for example, when the target is known to consist of well-defined structures, but how many, and their location, form and size are not specified. Following the Bayesian paradigm, we model the data and the target as random variables, and we account for the qualitative nature of the a priori information by introducing a hierarchical model in which the a priori variance is unknown and therefore part of the estimation problem. We present a numerically effective algorithm for estimating both the target and its prior variance. Computed examples with simulated and real data demonstrate that the algorithm gives good quality reconstructions for both emission and transmission PET problems in an efficient manner.
机译:PET发射和透射断层扫描以及低剂量X射线断层扫描中的数据由源自随机事件的光子计数组成。将数据建模为泊松过程的需求对传统的基于整体几何的重建算法提出了挑战。尽管目标的定性先验信息可能可用,但可能很难将其编码为最小化算法中的正则化功能。例如,当已知目标由定义明确的结构组成,但未指定数量及其位置,形式和大小时,就是这种情况。遵循贝叶斯范式,我们将数据和目标建模为随机变量,并通过引入先验方差未知且因此属于估计问题的层次模型来解释先验信息的定性性质。我们提出了一种数值有效的算法,用于估计目标及其先验方差。带有模拟和真实数据的计算示例表明,该算法可以有效地针对发射和传输PET问题提供良好的质量重构。

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