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

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arxiv 1710.05994 v3 pith:PT4AI7CV submitted 2017-10-16 cs.CV

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

classification cs.CV
keywords dataneutronvisualizationvolumetricclusteringdatasetsdbscanmachine
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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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.

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