基于联合稀疏编码的超分辨率PET图像重建

X. Ren, S. Lee
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引用次数: 3

摘要

本文对联合稀疏编码(JSC)用于正则化超分辨率(SR) PET重建的效果进行了对比研究。假设高分辨率(HR) PET图像可用于JSC的联合训练数据集,我们试图提高传统非HR PET成像中基于稀疏编码(SC)的SR重建的准确性。在这里,我们还假设从同一患者获得的解剖学(CT或MR)和PET图像位于耦合特征空间。通过公共映射函数,可以将一个特征空间中的图像转换为另一个特征空间中的相应图像。在这种情况下,耦合特征空间中的图像就联合训练的特定字典而言具有共同的稀疏表示,这是JSC方法的主要关键。我们实现了惩罚似然SR重建算法,该算法的惩罚项建模为JSC,并使用基于单个字典的SC惩罚与我们之前的方法进行了比较。实验结果表明,本文提出的JSC方法可以更准确地恢复标准SC方法经常错过的细节,明显优于标准SC方法。
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Joint Sparse Coding-Based Super-Resolution PET Image Reconstruction
This paper presents a comparative study of the effects of using joint sparse coding (JSC) for regularized super-resolution (SR) PET reconstruction. With an assumption that a limited number of high-resolution (HR) PET images are available for a joint training dataset for JSC, we attempt to improve the accuracy of sparse coding (SC) based SR reconstruction in conventional non-HR PET imaging. Here we also assume that the anatomical (CT or MR) and PET images acquired from the same patient lie in coupled feature spaces. The images in one feature space can be transformed into corresponding images in the other feature space by a common mapping function. In this case, the images in the coupled feature spaces have a common sparse representation in terms of the specific dictionaries that are jointly trained, which is the main key to the JSC method. We implemented the penalized-likelihood SR reconstruction algorithm whose penalty term is modeled as JSC and compared with our previous method using the single dictionary-based SC penalty. The experimental results demonstrate that our proposed JSC method clearly outperforms the standard SC method by more accurately restoring the fine details that are often missed by the standard SC method.
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