{"title":"使用物理获取的数据进行贝叶斯层析重建的新Gibbs先验验证","authors":"S. J. Lee, Y. Choi, Gene Gindi","doi":"10.1109/NSSMIC.1998.773846","DOIUrl":null,"url":null,"abstract":"The variety of Bayesian MAP approaches to tomography proposed in recent years can both stabilize reconstructions and lead to improved bias and variance. In the authors' previous work (see S.J. Lee et al., IEEE Trans. Med. Imaging, vol. MI-14, no. 4, p. 669-80, 1995; S.J. Lee et al., IEEE Trans. Nucl. Sci., vol. NS-44, no. 3, p. 1381-7, 1997), they showed that the thin-plate (TP) prior, which is less sensitive to variations in first spatial derivatives than the conventional membrane (MM) prior, yields improved reconstructions in the sense of low bias. In spite of the several advantages of such quadratic smoothing priors, they are still less than ideal due to their limitations in edge preservation. Here, the authors use a convex-nonquadratic potential function, which provides a degree of edge preservation. As in the case of quadratic priors, a class of two-dimensional smoothing splines with first and second partial derivatives are applied to the new potential function. In order to reduce difficulties such as oversmoothing for MM and edge overshooting for TP, the authors also generalize the prior energy definition to that of a linear combination of MM and TP using a control parameter, and observe its transition between the two extreme cases. To observe the efficacies of their new priors, the authors use physically acquired PET emission data. They also test these priors in a transmission setting with physically acquired transmission data. The authors' results indicate significant improvements in the quality of both emission and transmission images using their new priors.","PeriodicalId":129202,"journal":{"name":"1998 IEEE Nuclear Science Symposium Conference Record. 1998 IEEE Nuclear Science Symposium and Medical Imaging Conference (Cat. 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引用次数: 0
摘要
近年来提出的各种贝叶斯MAP断层扫描方法既可以稳定重建,又可以改善偏差和方差。在作者以前的工作中(见S.J. Lee et al., IEEE译)。医学影像,MI-14卷,编号。4,第669-80页,1995;李世杰等,电子工程学报。诊断。科学。,第NS-44卷,no。3, p. 1381- 7,1997),他们表明薄板(TP)先验比传统膜(MM)先验对第一空间导数的变化不太敏感,在低偏倚的意义上产生了更好的重建。尽管这种二次平滑先验有许多优点,但由于其在边缘保存方面的局限性,它们仍然不太理想。在这里,作者使用凸非二次势函数,它提供了一定程度的边缘保存。在二次先验的情况下,一类具有一阶和二阶偏导数的二维光滑样条被应用于新的势函数。为了减少MM的过平滑和TP的边缘超调等困难,作者还使用控制参数将先验能量定义推广到MM和TP的线性组合,并观察其在两种极端情况之间的过渡。为了观察其新先验的有效性,作者使用物理获得的PET发射数据。他们还在传输设置中使用物理获取的传输数据测试这些先验。作者的结果表明,使用新的先验算法,发射和传输图像的质量都有显著提高。
Validation of new Gibbs priors for Bayesian tomographic reconstruction using physically acquired data
The variety of Bayesian MAP approaches to tomography proposed in recent years can both stabilize reconstructions and lead to improved bias and variance. In the authors' previous work (see S.J. Lee et al., IEEE Trans. Med. Imaging, vol. MI-14, no. 4, p. 669-80, 1995; S.J. Lee et al., IEEE Trans. Nucl. Sci., vol. NS-44, no. 3, p. 1381-7, 1997), they showed that the thin-plate (TP) prior, which is less sensitive to variations in first spatial derivatives than the conventional membrane (MM) prior, yields improved reconstructions in the sense of low bias. In spite of the several advantages of such quadratic smoothing priors, they are still less than ideal due to their limitations in edge preservation. Here, the authors use a convex-nonquadratic potential function, which provides a degree of edge preservation. As in the case of quadratic priors, a class of two-dimensional smoothing splines with first and second partial derivatives are applied to the new potential function. In order to reduce difficulties such as oversmoothing for MM and edge overshooting for TP, the authors also generalize the prior energy definition to that of a linear combination of MM and TP using a control parameter, and observe its transition between the two extreme cases. To observe the efficacies of their new priors, the authors use physically acquired PET emission data. They also test these priors in a transmission setting with physically acquired transmission data. The authors' results indicate significant improvements in the quality of both emission and transmission images using their new priors.