原木稀疏序列x射线测量的重建和分割

Sebastian Springer, Aldo Glielmo, Angelina Senchukova, Tomi Kauppi, Jarkko Suuronen, Lassi Roininen, Heikki Haario, Andreas Hauptmann
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引用次数: 0

摘要

在工业应用中,扫描移动传送带上的物体是很常见的。如果获得运动物体的切片二维计算机断层扫描(CT)测量,我们称之为顺序扫描几何。在这种情况下,每个切片本身并不携带足够的信息来重建有用的层析图像。因此,在这里,我们建议使用降维卡尔曼滤波器来积累切片之间的信息,并允许足够准确的重建,以进一步评估对象。此外,我们建议使用一种称为密度峰值高级的无监督聚类方法,在重建对象的内部结构中执行分割和点出密度异常。我们在工业锯切过程中木材扫描应用的概念验证研究中评估了该方法,其目标是发现木材中的异常情况,以实现最佳锯切模式。从实验测量数据中评估了严重欠采样x测量的各种场景的重建和分割质量。实验结果表明,采用降维卡尔曼滤波可以鲁棒地获得分段日志,从而提高了重建质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction and segmentation from sparse sequential X-ray measurements of wood logs
In industrial applications, it is common to scan objects on a moving conveyor belt. If slice-wise 2D computed tomography (CT) measurements of the moving object are obtained we call it a sequential scanning geometry. In this case, each slice on its own does not carry sufficient information to reconstruct a useful tomographic image. Thus, here we propose the use of a Dimension reduced Kalman Filter to accumulate information between slices and allow for sufficiently accurate reconstructions for further assessment of the object. Additionally, we propose to use an unsupervised clustering approach known as Density Peak Advanced, to perform a segmentation and spot density anomalies in the internal structure of the reconstructed objects. We evaluate the method in a proof of concept study for the application of wood log scanning for the industrial sawing process, where the goal is to spot anomalies within the wood log to allow for optimal sawing patterns. Reconstruction and segmentation quality are evaluated from experimental measurement data for various scenarios of severely undersampled X-measurements. Results show clearly that an improvement in reconstruction quality can be obtained by employing the Dimension reduced Kalman Filter allowing to robustly obtain the segmented logs.
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