基于增强图像分割算法的三维聚集体接触演化研究

IF 8.9 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Construction and Building Materials Pub Date : 2025-03-21 Epub Date: 2025-02-17 DOI:10.1016/j.conbuildmat.2025.140371
Zundong Liang , Chao Xing , Yiqiu Tan , Bo Liu , Wei Wang
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引用次数: 0

摘要

在骨料骨架结构研究中,骨料接触点的分布是影响结构在荷载作用下稳定性的关键因素。然而,传统的图像分割方法难以准确分割CT图像中的聚集体,这给真实标本中三维空间聚集体接触的研究带来了挑战。为了解决这个问题,本研究首先提出了一种用于CT图像预处理的自适应双边滤波算法,以增强边缘细节。然后,提出了一种改进的U-Net算法,该算法结合了Inception卷积模块、残差连接、空间注意机制和一种新的包含边界信息的损失函数,有效地解决了聚类分割中的粘附问题。最后,基于骨料的质心和空间取向,构建了近似椭球模型,计算了主骨架骨料的接触数,进一步分析了接触数在加载过程中的演变。
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Investigation of three-dimensional aggregate contact evolution using an enhanced image segmentation algorithm
In aggregate skeleton structure research, the distribution of aggregate contact points is a key factor affecting structural stability under loading. However, traditional image segmentation methods struggle to accurately segment aggregates in CT images, making the study of aggregate contact in three-dimensional space in real specimens a challenge. To address this, this study first proposes an adaptive bilateral filtering algorithm for CT image preprocessing to enhance edge details. Then, an improved U-Net algorithm is proposed, which combines Inception convolution modules, residual connections, spatial attention mechanisms, and a novel loss function incorporating boundary information, effectively solving the adhesion issue in aggregate segmentation. Finally, based on the centroids and spatial orientation of aggregates, an approximate ellipsoid model is constructed, and the contact number of the main skeleton aggregates is calculated, further analyzing the evolution of contact numbers during loading.
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来源期刊
Construction and Building Materials
Construction and Building Materials 工程技术-材料科学:综合
CiteScore
13.80
自引率
21.60%
发文量
3632
审稿时长
82 days
期刊介绍: Construction and Building Materials offers an international platform for sharing innovative and original research and development in the realm of construction and building materials, along with their practical applications in new projects and repair practices. The journal publishes a diverse array of pioneering research and application papers, detailing laboratory investigations and, to a limited extent, numerical analyses or reports on full-scale projects. Multi-part papers are discouraged. Additionally, Construction and Building Materials features comprehensive case studies and insightful review articles that contribute to new insights in the field. Our focus is on papers related to construction materials, excluding those on structural engineering, geotechnics, and unbound highway layers. Covered materials and technologies encompass cement, concrete reinforcement, bricks and mortars, additives, corrosion technology, ceramics, timber, steel, polymers, glass fibers, recycled materials, bamboo, rammed earth, non-conventional building materials, bituminous materials, and applications in railway materials.
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