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Inferring 3D ellipsoids based on cross-sectional images with applications to porosity control of additive manufacturing

机译:基于横截面图像推断3D椭球及其在增材制造孔隙率控制中的应用

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摘要

This article develops a series of statistical approaches that can be used to infer size distribution, volume number density, and volume fraction of three-dimensional (3D) ellipsoidal particles based on two-dimensional (2D) cross-sectional images. Specifically, this article first establishes an explicit linkage between the size of the ellipsoidal particles and the size of cross-sectional elliptical contours. Then an efficient Quasi-Monte Carlo EM algorithm is developed to overcome the challenge of 3D size distribution estimation based on the established complex linkage. The relationship between the 3D and 2D particle number densities is also identified to estimate the volume number density and volume fraction. The effectiveness of the proposed method is demonstrated through simulation and case studies.
机译:本文开发了一系列统计方法,可用于基于二维(2D)横截面图像推断三维(3D)椭圆形粒子的尺寸分布,体积数密度和体积分数。具体来说,本文首先在椭圆形粒子的尺寸和横截面椭圆轮廓的尺寸之间建立了明确的联系。然后,开发了一种有效的准蒙特卡罗EM算法,以克服基于已建立的复杂链接的3D尺寸分布估计的挑战。还确定了3D和2D颗粒数密度之间的关系,以估计体积数密度和体积分数。通过仿真和案例研究证明了该方法的有效性。

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