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Post-reconstruction deconvolution of PET images by total generalized variation regularization

机译:通过总广义变化正则化对PET图像进行重建后反卷积

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Improving the quality of positron emission tomography (PET) images, affected by low resolution and high level of noise, is a challenging task in nuclear medicine and radiotherapy. This work proposes a restoration method, achieved after tomographic reconstruction of the images and targeting clinical situations where raw data are often not accessible. Based on inverse problem methods, our contribution introduces the recently developed total generalized variation (TGV) norm to regularize PET image deconvolution. Moreover, we stabilize this procedure with additional image constraints such as positivity and photometry invariance. A criterion for updating and adjusting automatically the regularization parameter in case of Poisson noise is also presented. Experiments are conducted on both synthetic data and real patient images.
机译:在低分辨率和高噪声水平的影响下,提高正电子发射断层扫描(PET)图像的质量是核医学和放射治疗中的一项艰巨任务。这项工作提出了一种修复方法,该方法是在对图像进行断层成像重建后针对通常无法获得原始数据的临床情况实现的。基于反问题方法,我们的贡献介绍了最近开发的总广义变异(TGV)范数,以对PET图像反卷积进行正则化。此外,我们通过附加的图像约束(例如阳性和光度不变性)来稳定该过程。还提出了在泊松噪声情况下自动更新和调整正则化参数的准则。在合成数据和真实患者图像上都进行了实验。

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