论文标题

用于散射估计和下降的局部模型

Local Models for Scatter Estimation and Descattering in Polyenergetic X-Ray Tomography

论文作者

McCann, Michael T., Klasky, Marc L., Schei, Jennifer L., Ravishankar, Saiprasad

论文摘要

我们提出了一种新的建模方法,用于基于训练集的本地社区的拟合模型,用于散射估计和下降。 X射线CT广泛用于医疗和工业应用中。 X射线散射,如果在重建过程中未考虑,则会在CT重建中丧失对比,并引入包括拔罐,阴影和条纹在内的严重伪影。即使这些定性伪影并不明显,散射也会在获得定量准确的重建方面构成主要障碍。我们的估计散射方法首先是使用粒子传输模拟软件生成具有和不散射的2D X光片的训练集。为了估算新的X光片的散射,我们将散点模型适应散布模型,以符合最相似的X线照片的一小部分。我们比较了几种X射线散点模型的本地和全局版本,包括最近的文献中的两个以及最近的基于深度学习的散点模型,这是在下降和定量密度重建的背景下,对模拟,球形对称的,单物质的单物体物体组成了各种密度的壳。我们的结果表明,当在本地应用时,即使是简单的模型也提供了最新的下降,从而减少了由于散射的一半以上而导致的密度重建误差。

We propose a new modeling approach for scatter estimation and descattering in polyenergetic X-ray computed tomography (CT) based on fitting models to local neighborhoods of a training set. X-ray CT is widely used in medical and industrial applications. X-ray scatter, if not accounted for during reconstruction, creates a loss of contrast in CT reconstructions and introduces severe artifacts including cupping, shading, and streaks. Even when these qualitative artifacts are not apparent, scatter can pose a major obstacle in obtaining quantitatively accurate reconstructions. Our approach to estimating scatter is, first, to generate a training set of 2D radiographs with and without scatter using particle transport simulation software. To estimate scatter for a new radiograph, we adaptively fit a scatter model to a small subset of the training data containing the radiographs most similar to it. We compared local and global (fit on full data sets) versions of several X-ray scatter models, including two from the recent literature, as well as a recent deep learning-based scatter model, in the context of descattering and quantitative density reconstruction of simulated, spherically symmetrical, single-material objects comprising shells of various densities. Our results show that, when applied locally, even simple models provide state-of-the-art descattering, reducing the error in density reconstruction due to scatter by more than half.

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