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用于PET图像重建的具有平均曲率和高斯曲率扩散正则化的贝叶斯算法。

Bayesian algorithms for PET image reconstruction with mean curvature and Gauss curvature diffusion regularizations.

作者信息

Zhu Hongqing, Shu Huazhong, Zhou Jian, Bao Xudong, Luo Limin

机构信息

Laboratory of Image Science and Technology, Department of Computer Science and Engineering, Southeast University, 210096 Nanjing, People's Republic of China.

出版信息

Comput Biol Med. 2007 Jun;37(6):793-804. doi: 10.1016/j.compbiomed.2006.08.015. Epub 2006 Sep 28.

Abstract

The basic mathematical problem behind PET is an inverse problem. Due to the inherent ill-posedness of this inverse problem, the reconstructed images will have noise and edge artifacts. A roughness penalty is often imposed on the solution to control noise and stabilize the solution, but the difficulty is to avoid the smoothing of edges. In this paper, we propose two new types of Bayesian one-step-late reconstruction approaches which utilize two different prior regularizations: the mean curvature (MC) diffusion function and the Gauss curvature (GC) diffusion function. As they have been studied in image processing for removing noise, these two prior regularizations encourage preserving the edge while the reconstructed images are smoothed. Moreover, the GC constraint can preserve smaller structures which cannot be preserved by MC. The simulation results show that the proposed algorithms outperform the quadratic function and total variation approaches in terms of preserving the edges during emission reconstruction.

摘要

正电子发射断层扫描(PET)背后的基本数学问题是一个逆问题。由于这个逆问题固有的不适定性,重建图像会有噪声和边缘伪影。通常会对解施加粗糙度惩罚以控制噪声并稳定解,但难点在于避免边缘模糊。在本文中,我们提出了两种新型的贝叶斯一步延迟重建方法,它们利用了两种不同的先验正则化:平均曲率(MC)扩散函数和高斯曲率(GC)扩散函数。由于它们在图像处理中已被研究用于去除噪声,这两种先验正则化在平滑重建图像的同时鼓励保留边缘。此外,GC约束可以保留MC无法保留的较小结构。模拟结果表明,在发射重建过程中,所提出的算法在保留边缘方面优于二次函数和总变差方法。

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