Fiber Orientation Estimation from 3D Image Data: Practical Algorithms, Visualization, and Interpretation

K. Robb, O. Wirjadi, K. Schladitz
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引用次数: 54

Abstract

Fibrous materials such as fiber-reinforced composites are finding increasing application in the automotive, aerospace, and other industries. Fiber arrangements and defects at microscopic scales have direct impact on their stability. Two-dimensional images obtained by either non-destructive or destructive imaging cannot reveal the full fiber orientation information. Therefore, three-dimensional images obtained by micro computed tomography (muCT) are used. Since segmentation of these image datasets is often difficult due to low contrast, we propose a linear filtering scheme to extract local fiber orientations. Efficient implementations of these filters have been proposed, resulting in prac tical algorithms with acceptable runtimes in the scale of minutes to at most a few hours for common tomographic image sizes. We show how to condense the local orientation information into visual representations. In contrast to existing 3D orientation estimation methods, our method results in densely sampled orientation maps. The proposed method is applied to images of two different fiber materials and compared to orientation estimates based on measures obtained from integral geometry. We show conformance of the proposed orientation estimation methods with these known methods.
从三维图像数据估计纤维方向:实用算法,可视化和解释
纤维材料,如纤维增强复合材料在汽车、航空航天和其他工业中的应用越来越广泛。纤维的排列和微观缺陷直接影响其稳定性。无论是无损成像还是破坏性成像所获得的二维图像都不能显示光纤的全部方向信息。因此,使用显微计算机断层扫描(muCT)获得的三维图像。由于这些图像数据集由于对比度低而难以分割,因此我们提出了一种线性滤波方案来提取局部纤维方向。已经提出了这些滤波器的有效实现,从而产生具有可接受的运行时间在几分钟到最多几个小时的普通层析图像尺寸的实用算法。我们将展示如何将局部方向信息压缩为视觉表示。与现有的三维方向估计方法相比,我们的方法得到了密集采样的方向图。将该方法应用于两种不同纤维材料的图像,并与基于积分几何测量的取向估计进行了比较。我们证明了所提出的方向估计方法与这些已知方法的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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