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首页> 外文期刊>Computational Mechanics: Solids, Fluids, Fracture Transport Phenomena and Variational Methods >Automated segmentation of porous thermal spray material CT scans with predictive uncertainty estimation
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Automated segmentation of porous thermal spray material CT scans with predictive uncertainty estimation

机译:多孔热喷涂材料的自动分割 CT 扫描,具有预测性不确定性估计

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Thermal sprayed metal coatings are used in many industrial applications, and characterizing the structure and performance of these materials is vital to understanding their behavior in the field. X-ray computed tomography (CT) enables volumetric, nondestructive imaging of these materials, but precise segmentation of this grayscale image data into discrete material phases is necessary to calculate quantities of interest related to material structure. In this work, we present a methodology to automate the CT segmentation process as well as quantify uncertainty in segmentations via deep learning. Neural networks (NNs) have been shown to excel at segmentation tasks; however, memory constraints, class imbalance, and lack of sufficient training data often prohibit their deployment in high resolution volumetric domains. Our 3D convolutional NN implementation mitigates these challenges and accurately segments full resolution CT scans of thermal sprayed materials with maps of uncertainty that conservatively bound the predicted geometry. These bounds are propagated through calculations of material properties such as porosity that may provide an understanding of anticipated behavior in the field.
机译:热喷涂金属涂层用于许多工业应用,表征这些材料的结构和性能对于了解它们在现场的行为至关重要。X 射线计算机断层扫描 (CT) 能够对这些材料进行体积、无损成像,但必须将这种灰度图像数据精确分割为离散的材料相,以计算与材料结构相关的感兴趣量。在这项工作中,我们提出了一种自动化 CT 分割过程的方法,并通过深度学习量化分割中的不确定性。神经网络 (NN) 已被证明在分割任务方面表现出色;然而,内存限制、类不平衡和缺乏足够的训练数据通常禁止它们在高分辨率体积域中的部署。我们的 3D 卷积神经网络实现缓解了这些挑战,并准确地分割了热喷涂材料的全分辨率 CT 扫描,并具有保守地束缚预测几何形状的不确定性图。这些边界通过对材料属性(如孔隙率)的计算来传播,这些属性可以提供对现场预期行为的理解。

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