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Sparse representation and dictionary learning penalized image reconstruction for positron emission tomography

机译:正电子发射断层扫描的稀疏表示和字典学习惩罚图像重建

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摘要

Accurate and robust reconstruction of the radioactivity concentration is of great importance in positron emission tomography (PET) imaging. Given the Poisson nature of photo-counting measurements, we present a reconstruction framework that integrates sparsity penalty on a dictionary into a maximum likelihood estimator. Patch-sparsity on a dictionary provides the regularization for our effort, and iterative procedures are used to solve the maximum likelihood function formulated on Poisson statistics. Specifically, in our formulation, a dictionary could be trained on CT images, to provide intrinsic anatomical structures for the reconstructed images, or adaptively learned from the noisy measurements of PET. Accuracy of the strategy with very promising application results from Monte-Carlo simulations, and real data are demonstrated.
机译:准确,可靠地重建放射性浓度在正电子发射断层扫描(PET)成像中非常重要。考虑到照相计数测量的泊松性质,我们提出了一种重构框架,该框架将字典上的稀疏度惩罚集成到最大似然估计中。字典上的稀疏稀疏度为我们的工作提供了正则化,并且使用迭代过程来求解基于Poisson统计量的最大似然函数。具体来说,在我们的公式中,可以在CT图像上训练字典,以为重建的图像提供固有的解剖结构,或者从PET的嘈杂测量中自适应地学习。演示了该策略的准确性以及来自蒙特卡洛模拟的非常有前途的应用结果以及实际数据。

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