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Electronic Noise Modeling in Statistical Iterative Reconstruction

机译:统计迭代重建中的电子噪声建模

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We consider electronic noise modeling in tomographic image reconstruction when the measured signal is the sum of a Gaussian distributed electronic noise component and another random variable whose log-likelihood function satisfies a certain linearity condition. Examples of such likelihood functions include the Poisson distribution and an exponential dispersion (ED) model that can approximate the signal statistics in integration mode X-ray detectors. We formulate the image reconstruction problem as a maximum-likelihood estimation problem. Using an expectation-maximization approach, we demonstrate that a reconstruction algorithm can be obtained following a simple substitution rule from the one previously derived without electronic noise considerations. To illustrate the applicability of the substitution rule, we present examples of a fully iterative reconstruction algorithm and a sinogram smoothing algorithm both in transmission CT reconstruction when the measured signal contains additive electronic noise. Our simulation studies show the potential usefulness of accurate electronic noise modeling in low-dose CT applications.
机译:当被测信号是高斯分布电子噪声分量和另一个对数似然函数满足一定线性条件的随机变量之和时,我们考虑在断层图像重建中考虑电子噪声建模。这种似然函数的示例包括泊松分布和指数弥散(ED)模型,该模型可以近似积分模式X射线检测器中的信号统计量。我们将图像重建问题公式化为最大似然估计问题。使用期望最大化方法,我们证明了一种重构算法可以遵循一个简单的替换规则,该替换规则是从先前导出的规则中进行的,无需考虑电子噪声。为了说明替换规则的适用性,我们介绍了当测量的信号包含加性电子噪声时在传输CT重建中的完全迭代重建算法和正弦图平滑算法的示例。我们的仿真研究表明,在低剂量CT应用中进行精确电子噪声建模的潜在有用性。

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