Fast variance image predictions for quadratically regularized statistical image reconstruction in fan-beam tomography

Yingying Zhang, J. Fessier, J. Hsieh
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引用次数: 7

Abstract

Accurate predictions of variance can be useful for algorithm analysis and for the design of regularization methods. Computing predicted variances at every pixel using matrix-based approximations is impractical. Even the recently adopted methods that are based on local discrete Fourier approximations are impractical since they would require two 2D FFT calculations for every pixel, particularly for shift-variant systems like fan-beam tomography. This paper describes a new analytical approach to predict the approximate variance maps of images reconstructed by penalized likelihood estimation with quadratic regularization in a fan-beam geometry. This analytical approach requires computation equivalent to one backprojection and some simple summations, so it is computationally practical even for the data sizes in X-ray CT. Simulation results show that it gives accurate predictions of the variance maps. The parallel-beam geometry is a simple special case of the fan-beam analysis.
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扇束层析成像中二次正则化统计图像重建的快速方差图像预测
准确的方差预测对于算法分析和正则化方法的设计是有用的。使用基于矩阵的近似计算每个像素的预测方差是不切实际的。即使是最近采用的基于局部离散傅立叶近似的方法也是不切实际的,因为它们需要对每个像素进行两次二维FFT计算,特别是对于像扇束断层扫描这样的移位变系统。本文描述了一种新的分析方法来预测扇形波束几何中二次正则化惩罚似然估计重建图像的近似方差映射。这种分析方法只需要相当于一个反向投影和一些简单的求和的计算量,因此即使对于x射线CT的数据大小,它在计算上也是实用的。仿真结果表明,该方法能准确预测方差图。平行梁几何是扇形梁分析的一个简单特例。
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