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Improving Filtered Backprojection Reconstruction by Data-Dependent Filtering

机译:通过数据相关的滤波改善滤波的反投影重建

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摘要

Filtered backprojection, one of the most widely used reconstruction methods in tomography, requires a large number of low-noise projections to yield accurate reconstructions. In many applications of tomography, complete projection data of high quality cannot be obtained, because of practical considerations. Algebraic methods tend to handle such problems better, but are computationally more expensive. In this paper, we introduce a new method that improves the filtered backprojection method by using a custom data-dependent filter that minimizes the projection error of the resulting reconstruction. We show that the computational cost of the new method is significantly lower than that of algebraic methods. Experiments on both simulation and experimental data show that the method is able to produce more accurate reconstructions than filtered backprojection based on popular static filters when presented with data with a limited number of projections or statistical noise present. Furthermore, the results show that the method produces reconstructions with similar accuracy to algebraic methods, but is faster at producing them. Finally, we show that the method can be extended to exploit certain forms of prior knowledge, improving reconstruction accuracy in specific cases.
机译:滤波反投影是层析成像中使用最广泛的重建方法之一,它需要大量的低噪声投影才能产生准确的重建结果。由于实际的考虑,在层析成像的许多应用中,无法获得高质量的完整投影数据。代数方法往往可以更好地处理此类问题,但计算成本更高。在本文中,我们介绍了一种新的方法,该方法通过使用自定义数据相关的滤波器来改进滤波后的反投影方法,从而使生成的重构的投影误差最小。我们表明,新方法的计算成本明显低于代数方法。在模拟和实验数据上进行的实验表明,与有限的投影数或统计噪声一起提供数据时,与基于流行的静态滤波器的滤波反投影相比,该方法能够产生更准确的重构。此外,结果表明,该方法产生的重建精度与代数方法相似,但生成速度更快。最后,我们证明了该方法可以扩展为利用某些形式的先验知识,从而在特定情况下提高重建精度。

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