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Penalty weighting for statistical iterative CT reconstruction

机译:统计迭代CT重建的惩罚权重

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The core of common statistical iterative reconstruction methods is the maximization of the likelihood that the reconstructed image belongs to the measured data. Since the underlying inverse problem is ill-posed, the likelihood function is often extended by a penalty term to form an objective function, which contains assumptions about the content of the image, most often by favoring smooth images. As can be shown for common likelihood functions given in literature, the influence of a smoothing penalty term, and in consequence the smoothing effect within the image, varies spatially. This results in an inhomogeneous resolution of the reconstructed image, which can reduce the diagnostic value of the image. We present a method to calculate a spatially varying weighting function for the penalty term, which leads to a likelihood function with constant strength of the smoothing effect over the whole image. For verification, simulated data are reconstructed iteratively. While images reconstructed without weighting show varying sharpness of boundaries, images reconstructed with weighting are clearly advantageous with respect to this. The resolution homogeneity is bought by a different noise distribution: While the noise distribution without weighting is homogeneous, the noise distribution with weighting varies spatially.
机译:常见的统计迭代重建方法的核心是使重建图像属于测量数据的可能性最大化。由于潜在的逆问题是不适当的,因此似然函数通常用罚分项扩展以形成目标函数,该目标函数包含有关图像内容的假设,最常见的情况是偏向于平滑图像。如文献中给出的常见似然函数所示,平滑惩罚项的影响以及图像内的平滑效果在空间上会发生变化。这导致重建图像的分辨率不均匀,这会降低图像的诊断价值。我们提出一种方法来计算惩罚项的空间变化加权函数,这会导致似然函数在整个图像上具有恒定的平滑效果强度。为了验证,迭代地重建了模拟数据。尽管在没有加权的情况下重建的图像显示出不同的边界清晰度,但是在加权的情况下重建的图像显然对此具有优势。分辨率均匀性是通过不同的噪声分布来购买的:尽管没有加权的噪声分布是均匀的,但是具有加权的噪声分布却在空间上变化。

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