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Volumetric Data Exploration with Machine Learning-Aided Visualization in Neutron Science

机译:中子科学机器学习可视化的体积数据探索

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Recent advancements in neutron and X-ray sources, instrumentation and data collection modes have significantly increased the experimental data size (which could easily contain 10~8-10~(10) data points), so that conventional volumetric visualization approaches become inefficient for both still imaging and interactive OpenGL rendition in a 3D setting. We introduce a new approach based on the unsupervised machine learning algorithm, Density-Based Spatial Clustering of Applications with Noise (DBSCAN), to efficiently analyze and visualize large volumetric datasets. Here we present two examples of analyzing and visualizing datasets from the diffuse scattering experiment of a single crystal sample and the tomographic reconstruction of a neutron scanning of a turbine blade. We found that by using the intensity as the weighting factor in the clustering process, DBSCAN becomes very effective in de-noising and feature/boundary detection, and thus enables better visualization of the hierarchical internal structures of the neutron scattering data.
机译:中子和X射线源的最新进展,仪器和数据收集模式的实验数据大小显着增加(这很容易含有10〜8-10〜(10)个数据点),因此传统的体积可视化方法对两者都效率低下在3D设置中仍在成像和交互式OpenGL演绎。我们介绍了一种基于无监督机器学习算法的新方法,基于密度的噪声(DBSCAN)的应用程序的空间聚类,以有效地分析和可视化大容量数据集。在这里,我们介绍了从单晶样品的漫射散射实验和涡轮叶片的中子扫描的断层重建的分析和可视化数据集的两个示例。我们发现,通过使用群集过程中的强度作为加权因子,DBSCAN在去噪和特征/边界检测方面变得非常有效,因此能够更好地可视化中子散射数据的分层内部结构。

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