{"title":"从 X 射线显微计算机断层成像图像分割和重建颗粒的增强型混合算法","authors":"Ruidong Li, Pin Zhang, Zhen-Yu Yin, Brian Sheil","doi":"10.1002/nag.3832","DOIUrl":null,"url":null,"abstract":"<p>Accurate three-dimensional (3D) reconstruction of granular grains from x-ray micro-computed tomography (µCT) images is a long-standing challenge, particularly for dense soil samples. This study develops a machine learning (ML) enhanced approach to automatically reconstruct granular grains from µCT images. The novel academic contributions of this paper include (a) a hierarchical strategy based on parameter-independent polygonal approximation, area, and concavity analysis, for the first time, to identify and eliminate both intergranular and intragranular voids; (b) incorporation of a recursive segmentation scheme and ML-based grain classifier to avoid over-segmentation; (c) novel modifications on the determination of splitting paths to enhance segmentation accuracy; and (d) an effective approach of assigning initial level set functions for reconstructing granular grains automatically. The hybrid ML algorithm is applied to µCT images of dense Mojave Mars Simulant. The results indicate that the proposed method can accurately segment grain clumps with unclear boundaries. The new automatic reconstruction algorithm eliminates ineffective operations and achieves a three-fold increase in computational speed than previous methods documented in the literature. Ninety-one percent of grains with distinct boundaries can be reconstructed and the reconstruction ratio reaches 81% even for grains without distinct boundaries. The overall reconstruction ratio of grains increases by 20% compared with previous methods, achieving a step-change improvement for one-to-one mapping of real soil samples.</p>","PeriodicalId":13786,"journal":{"name":"International Journal for Numerical and Analytical Methods in Geomechanics","volume":"48 17","pages":"4206-4220"},"PeriodicalIF":3.4000,"publicationDate":"2024-09-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1002/nag.3832","citationCount":"0","resultStr":"{\"title\":\"Enhanced Hybrid Algorithms for Segmentation and Reconstruction of Granular Grains From X-Ray Micro Computed-Tomography Images\",\"authors\":\"Ruidong Li, Pin Zhang, Zhen-Yu Yin, Brian Sheil\",\"doi\":\"10.1002/nag.3832\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>Accurate three-dimensional (3D) reconstruction of granular grains from x-ray micro-computed tomography (µCT) images is a long-standing challenge, particularly for dense soil samples. This study develops a machine learning (ML) enhanced approach to automatically reconstruct granular grains from µCT images. The novel academic contributions of this paper include (a) a hierarchical strategy based on parameter-independent polygonal approximation, area, and concavity analysis, for the first time, to identify and eliminate both intergranular and intragranular voids; (b) incorporation of a recursive segmentation scheme and ML-based grain classifier to avoid over-segmentation; (c) novel modifications on the determination of splitting paths to enhance segmentation accuracy; and (d) an effective approach of assigning initial level set functions for reconstructing granular grains automatically. The hybrid ML algorithm is applied to µCT images of dense Mojave Mars Simulant. The results indicate that the proposed method can accurately segment grain clumps with unclear boundaries. The new automatic reconstruction algorithm eliminates ineffective operations and achieves a three-fold increase in computational speed than previous methods documented in the literature. Ninety-one percent of grains with distinct boundaries can be reconstructed and the reconstruction ratio reaches 81% even for grains without distinct boundaries. 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引用次数: 0
摘要
从 X 射线显微计算机断层扫描(µCT)图像中准确重建粒状颗粒的三维(3D)图像是一项长期存在的挑战,尤其是对于致密土壤样本而言。本研究开发了一种机器学习(ML)增强型方法,可从 µCT 图像中自动重建粒状颗粒。本文的新颖学术贡献包括:(a) 基于参数无关的多边形近似、面积和凹度分析的分层策略,首次识别并消除了粒间空洞和粒内空洞;(b) 加入递归分割方案和基于 ML 的颗粒分类器,以避免过度分割;(c) 对分割路径的确定进行了新的修改,以提高分割精度;以及 (d) 为自动重建颗粒而分配初始水平集函数的有效方法。混合 ML 算法应用于高密度莫哈韦火星模拟的 µCT 图像。结果表明,所提出的方法可以准确地分割边界不清晰的颗粒团块。新的自动重建算法消除了无效操作,计算速度比文献记载的以前的方法提高了三倍。91%有明显边界的晶粒可以被重建,即使是没有明显边界的晶粒,重建率也达到了 81%。与之前的方法相比,谷粒的总体重建率提高了 20%,在真实土壤样本的一对一映射方面实现了质的飞跃。
Enhanced Hybrid Algorithms for Segmentation and Reconstruction of Granular Grains From X-Ray Micro Computed-Tomography Images
Accurate three-dimensional (3D) reconstruction of granular grains from x-ray micro-computed tomography (µCT) images is a long-standing challenge, particularly for dense soil samples. This study develops a machine learning (ML) enhanced approach to automatically reconstruct granular grains from µCT images. The novel academic contributions of this paper include (a) a hierarchical strategy based on parameter-independent polygonal approximation, area, and concavity analysis, for the first time, to identify and eliminate both intergranular and intragranular voids; (b) incorporation of a recursive segmentation scheme and ML-based grain classifier to avoid over-segmentation; (c) novel modifications on the determination of splitting paths to enhance segmentation accuracy; and (d) an effective approach of assigning initial level set functions for reconstructing granular grains automatically. The hybrid ML algorithm is applied to µCT images of dense Mojave Mars Simulant. The results indicate that the proposed method can accurately segment grain clumps with unclear boundaries. The new automatic reconstruction algorithm eliminates ineffective operations and achieves a three-fold increase in computational speed than previous methods documented in the literature. Ninety-one percent of grains with distinct boundaries can be reconstructed and the reconstruction ratio reaches 81% even for grains without distinct boundaries. The overall reconstruction ratio of grains increases by 20% compared with previous methods, achieving a step-change improvement for one-to-one mapping of real soil samples.
期刊介绍:
The journal welcomes manuscripts that substantially contribute to the understanding of the complex mechanical behaviour of geomaterials (soils, rocks, concrete, ice, snow, and powders), through innovative experimental techniques, and/or through the development of novel numerical or hybrid experimental/numerical modelling concepts in geomechanics. Topics of interest include instabilities and localization, interface and surface phenomena, fracture and failure, multi-physics and other time-dependent phenomena, micromechanics and multi-scale methods, and inverse analysis and stochastic methods. Papers related to energy and environmental issues are particularly welcome. The illustration of the proposed methods and techniques to engineering problems is encouraged. However, manuscripts dealing with applications of existing methods, or proposing incremental improvements to existing methods – in particular marginal extensions of existing analytical solutions or numerical methods – will not be considered for review.