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Comparison between post-smoothed maximum-likelihood and penalized-likelihood for image reconstruction with uniform spatial resolution

机译:空间平滑度均匀的图像重建后平滑最大似然与惩罚似然的比较

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Regularization is desirable for image reconstruction in emission tomography. One of the most powerful regularization techniques is the penalized-likelihood reconstruction algorithm (or equivalently, maximum-a-posteriori reconstruction), where the sum of the likelihood and a noise suppressing penalty term (or Bayesian prior) is optimized. Usually, this approach yields position dependent resolution and bias. However, for some applications in emission tomography, a shift invariant point spread function would be advantageous. Recently, a new method has been proposed, in which the penalty term is tuned in every pixel in order to impose a uniform local impulse response. In this paper, an alternative way to tune the penalty term is presented. The performance of the new method is compared to that of the post-smoothed maximum-likelihood approach, using the impulse response of the former method as the post-smoothing filter for the latter. For this experiment, the noise properties of the penalized-likelihood algorithm were not superior to those of post-smoothed maximum-likelihood reconstruction.
机译:正则化对于发射断层摄影中的图像重建是合乎需要的。最强大的正则化技术之一是惩罚似然重建算法(或等效地,最大后验重建),其中似然性和噪声抑制惩罚项(或贝叶斯先验)之和得到了优化。通常,此方法会产生与位置有关的分辨率和偏差。然而,对于在放射线断层摄影术中的某些应用,位移不变点扩展函数将是有利的。最近,提出了一种新方法,其中在每个像素中调整惩罚项以施加均匀的局部脉冲响应。在本文中,提出了一种调整惩罚项的替代方法。使用前一种方法的脉冲响应作为后者的后平滑滤波器,将新方法的性能与后平滑的最大似然方法的性能进行了比较。对于此实验,惩罚似然算法的噪声特性不优于平滑后的最大似然重构。

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