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CBCT reconstruction via a penalty combining total variation and its higher-degree term

机译:通过结合总变异及其高阶项的惩罚来重建CBCT

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Penalized weighted least-squares (PWLS) iterative algorithm with a total variation penalty (PWLS-TV) has shown potential to improve cone-beam CT (CBCT) image quality, particularly in suppressing noise and preserving edges. However, it sometimes suffers from the well-known staircase effect, which produces piece-wise constant areas in images. In order to remove the staircase effect, there is an increasing interest in replacing TV by higher-order derivative operations such as Hessian. Unfortunately, Hessian tends to blur the edges in the reconstruction results. In this study, we proposed a new penalty, namely the TV-H penalty, which combines the TV penalty and the Hessian penalty for CBCT reconstruction. The TV-H penalty retains some of the most favorable properties of the TV penalty like suppressing noise and preserving edges and has a better ability in preserving the structures of gradual intensity transition in images. The penalized weighted least-squares (PWLS) criterion with the majorization-minimization (MM) approach was used to minimize the objective function. Two simulated digital phantoms were used to compare the performance of TV, Hessian penalty and TV-H penalties. Our experiments indicated that the TV-H penalty outperformed the TV penalty and the Hessian penalty.
机译:具有总变化罚分的惩罚加权最小二乘(PWLS)迭代算法(PWLS-TV)已显示出改善锥束CT(CBCT)图像质量的潜力,特别是在抑制噪声和保留边缘方面。但是,它有时会受到众所周知的阶梯效应的影响,阶梯效应会在图像中产生分段的恒定区域。为了消除阶梯效应,人们越来越感兴趣的是用诸如Hessian之类的高阶导数运算来代替TV。不幸的是,Hessian倾向于使重建结果中的边缘模糊。在这项研究中,我们提出了一种新的惩罚,即TV-H惩罚,该惩罚结合了TV惩罚和Hessian惩罚以进行CBCT重建。 TV-H罚分保留了TV罚分的一些最有利的属性,例如抑制噪声和保留边缘,并具有更好的保留图像中渐进强度转换结构的能力。使用带有最小化最大化(MM)方法的惩罚加权最小二乘(PWLS)准则来最小化目标函数。使用两个模拟的数字幻像来比较电视的性能,Hessian惩罚和TV-H惩罚。我们的实验表明,TV-H罚分优于TV罚分和Hessian罚分。

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