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Bayesian Image Reconstruction for Transmission Tomography Using Mixture Model Priors and Deterministic Annealing Algorithms

机译:使用混合模型前沿和确定性退火算法的传输断层扫描的贝叶斯图像重建

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We previously introduced a new Bayesian reconstruction method for transmission tomographic reconstruction that is useful in attenuation correction in SPECT and PET. To make it practical, we apply a deterministic annealing algorithm to the method in order to avoid the dependence of the MAP estimate on the initial conditions. The Bayesian reconstruction method used a novel pointwise prior in the form of a mixture of gamma distributions. The prior models the object as comprising voxels whose values (attenuation coefficients) cluster into a few classes (e.g. soft tissue, lung, bone). This model is particularly applicable to transmission tomography since the attenuation map is usually well-clustered and the approximate values of attenuation coefficients in each region are known. The algorithm is implemented as two alternating procedures, a regularized likelihood reconstruction and a mixture parameter estimation. The Bayesian reconstruction algorithm can be effective, but has the problem of sensitivity to initial conditions since the overall objective is non-convex. To make it more practical, it is important to avoid such dependence on initial conditions. Here, we implement a deterministic annealing (DA) procedure on the alternating algorithm. We present the Bayesian reconstructions with/out DA and show the independence of initial conditions with DA.
机译:我们之前介绍了一种新的贝叶斯断层重建方法,可用于SPECT和PET中的衰减校正。为了使其实用,我们将确定性退火算法应用于方法,以避免地图估计对初始条件的依赖性。贝叶斯重建方法使用伽玛分布混合物的形式发尖的新型。先前模拟了对象,其包含其值(衰减系数)聚集成几种类(例如软组织,肺,骨)的体素。该模型特别适用于透射断层扫描,因为衰减图通常是良好聚类的,并且已知每个区域中的衰减系数的近似值。该算法实现为两个交替过程,正则化似然重建和混合参数估计。贝叶斯重建算法可以有效,但由于整体目标是非凸的,因此对初始条件的敏感性问题。为了使其更加实用,重要的是避免对初始条件的这种依赖性。这里,我们在交替算法上实现确定性退火(DA)过程。我们向贝叶斯重建提供/淘汰,并显示初始条件的独立性。

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