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A Novel Tomographic Reconstruction Method Based on the Robust Student's t Function For Suppressing Data Outliers

机译:基于鲁棒学生t函数的层析成像重建方法

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摘要

Regularized iterative reconstruction methods in computed tomography can be effective when reconstructing from mildly inaccurate undersampled measurements. These approaches will fail, however, when more prominent data errors, or outliers, are present. These outliers are associated with various inaccuracies of the acquisition process: defective pixels or miscalibrated camera sensors, scattering, missing angles, etc. To account for such large outliers, robust data misfit functions, such as the generalized Huber function, have been applied successfully in the past. In conjunction with regularization techniques, these methods can overcome problems with both limited data and outliers. This paper proposes a novel reconstruction approach using a robust data fitting term which is based on the Student's t distribution. This misfit promises to be even more robust than the Huber misfit as it assigns a smaller penalty to large outliers. We include the total variation regularization term and automatic estimation of a scaling parameter that appears in the Student's t function. We demonstrate the effectiveness of the technique by using a realistic synthetic phantom and also apply it to a real neutron dataset.
机译:从轻度不准确的欠采样测量值进行重建时,计算机断层扫描中的正则化迭代重建方法可能会非常有效。但是,如果存在更突出的数据错误或异常值,这些方法将失败。这些离群值与采集过程的各种不准确度有关:像素缺陷或相机传感器校准不当,散射,角度丢失等。为解决如此大的离群值,已成功地将鲁棒的数据失配函数(例如广义的Huber函数)应用于过去。结合正则化技术,这些方法可以克服数据有限和离群值的问题。本文提出了一种基于学生t分布的,使用健壮数据拟合项的新颖重构方法。这种失配有望比Huber失配更加强大,因为它给较大的异常值分配了较小的惩罚。我们包括总变化正则项和出现在学生t函数中的缩放参数的自动估计。我们通过使用逼真的合成体模来证明该技术的有效性,并将其应用于真实的中子数据集。

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