用多视图深度学习分类确定HEDP泡沫的质量

Nadav Schneider, M. Rusanovsky, R. Gvishi, G. Oren
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引用次数: 1

摘要

高能量密度物理(HEDP)实验通常涉及在低密度泡沫内部传播的动态波前。这种效果会影响其密度,从而影响其透明度。泡沫生产中的一个常见问题是产生有缺陷的泡沫。要对泡沫进行质量分类,需要准确的尺寸和均匀性信息。因此,这些参数正在使用三维测量激光共聚焦显微镜进行表征。对于每个泡沫,拍摄五张图像:两张2D图像代表顶部和底部表面泡沫平面,三张3D扫描的侧面截面图像。专家必须通过图像集对泡沫的质量进行人工分类,这是一项复杂、苛刻、费力的工作,只有这样才能确定泡沫是否可以用于实验。目前,质量有正常和缺陷两个二元级别。同时,通常要求专家对正常缺陷泡沫进行分类,即缺陷泡沫,但可能足以进行所需的实验。这个子类是有问题的,因为不确定的判断主要是直观的。在这项工作中,我们提出了一种新颖的、最先进的多视图深度学习分类模型,该模型通过自动确定泡沫的质量分类来模仿物理学家的视角,从而帮助专家。我们的模型在上下表面泡沫平面上实现了86%的准确率,在整个集合上实现了82%的准确率,这表明该问题具有有趣的启发式。这项工作的一个重要附加价值是能够回归泡沫质量而不是二元演绎,甚至可以直观地解释决策。本工作中使用的源代码以及其他相关源代码可在https://github.com/Scientific-Computing-Lab-NRCNIMulti-View-Foams.git上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining HEDP Foams' Quality with Multi-View Deep Learning Classification
High energy density physics (HEDP) experiments commonly involve a dynamic wave-front propagating inside a lowdensity foam. This effect affects its density and hence, its transparency. A common problem in foam production is the creation of defective foams. Accurate information on their dimension and homogeneity is required to classify the foams' quality. Therefore, those parameters are being characterized using a 3D-measuring laser confocal microscope. For each foam, five images are taken: two 2D images representing the top and bottom surface foam planes and three images of side cross-sections from 3D scannings. An expert has to do the complicated, harsh, and exhausting work of manually classifying the foam's quality through the image set and only then determine whether the foam can be used in experiments or not. Currently, quality has two binary levels of normal vs. defective. At the same time, experts are commonly required to classify a sub-class of normal-defective, i.e., defective foams but might be sufficient for the needed experiment. This sub-class is problematic due to inconclusive judgment that is primarily intuitive. In this work, we present a novel state─of─the─art multi-view deep learning classification model that mimics the physicist's perspective by automatically determining the foams' quality classification and thus aids the expert. Our model achieved 86% accuracy on upper and lower surface foam planes and 82% on the entire set, suggesting interesting heuristics to the problem. A significant added value in this work is the ability to regress the foam quality instead of binary deduction and even explain the decision visually. The source code used in this work, as well as other relevant sources, are available at: https://github.com/Scientific-Computing-Lab-NRCNIMulti-View-Foams.git.
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