Automated Image Segmentation of 3D Printed Fibrous Composite Micro-Structures Using a Neural Network (2022-12)¶
10.1016/j.conbuildmat.2022.130099
, , , ,
Journal Article - Construction and Building Materials, Vol. 365
Abstract
A new, automated image segmentation method is presented that effectively identifies the micro-structural objects (fibre, air void, matrix) of 3D printed fibre-reinforced materials using a deep convolutional neural network. The method creates training data from a physical specimen composed of a single, straight fibre embedded in a cementitious matrix with air voids. The specific micro-structure of this strain-hardening cementitious composite (SHCC) is obtained from X-ray micro-computed tomography scanning, after which the 3D ground truth mask of the sample is constructed by connecting each voxel of a scanned image to the corresponding micro-structural object. The neural network is trained to identify fibres oriented in arbitrary directions through the application of a data augmentation procedure, which eliminates the time-consuming task of a human expert to manually annotate these data. The predictive capability of the methodology is demonstrated via the analysis of a practical SHCC developed for 3D concrete printing, showing that the automated segmentation method is well capable of adequately identifying complex micro-structures with arbitrarily distributed and oriented fibres. Although the focus of the current study is on SHCC materials, the proposed methodology can also be applied to other fibre-reinforced materials, such as fibre-reinforced plastics. The micro-structures identified by the image segmentation method may serve as input for dedicated finite element models that allow for computing their mechanical behaviour as a function of the micro-structural composition.
¶
11 References
- Figueiredo Stefan, Overmeir Anne, Nefs Karsten, Schlangen Erik et al. (2020-07)
Quality-Assessment of Printable Strain-Hardening Cementitious Composites Manufactured in Two Different Printing Facilities - Figueiredo Stefan, Rodríguez Claudia, Ahmed Zeeshan, Bos Derk et al. (2019-03)
An Approach to Develop Printable Strain-Hardening Cementitious Composites - Li Victor, Bos Freek, Yu Kequan, McGee Wesley et al. (2020-04)
On the Emergence of 3D Printable Engineered, Strain-Hardening Cementitious Composites - Ogura Hiroki, Nerella Venkatesh, Mechtcherine Viktor (2018-08)
Developing and Testing of Strain-Hardening Cement-Based Composites (SHCC) in the Context of 3D Printing - Overmeir Anne, Figueiredo Stefan, Šavija Branko, Bos Freek et al. (2022-02)
Design and Analyses of Printable Strain-Hardening Cementitious Composites with Optimized Particle-Size-Distribution - Suiker Akke (2018-01)
Mechanical Performance of Wall Structures in 3D Printing Processes:
Theory, Design Tools and Experiments - Suiker Akke (2021-11)
Effect of Accelerated Curing and Layer Deformations on Structural Failure During Extrusion-Based 3D Printing - Suiker Akke, Wolfs Robert, Lucas Sandra, Salet Theo (2020-06)
Elastic Buckling and Plastic Collapse During 3D Concrete Printing - Wolfs Robert, Bos Freek, Salet Theo (2018-02)
Early-Age Mechanical Behaviour of 3D Printed Concrete:
Numerical Modelling and Experimental Testing - Wolfs Robert, Suiker Akke (2019-06)
Structural Failure During Extrusion-Based 3D Printing Processes - Zhu Binrong, Pan Jinlong, Nematollahi Behzad, Zhou Zhenxin et al. (2019-07)
Development of 3D Printable Engineered Cementitious Composites with Ultra-High Tensile Ductility for Digital Construction
7 Citations
- Chen Wenguang, Yu Jie, Ye Junhong, Yu Jiangtao et al. (2025-11)
3D Printed High-Performance Fiber-Reinforced Cementitious Composites:
Fresh, Mechanical, and Microstructural Properties - Özalp Abdulkadir, Aldemir Alper (2025-03)
Artificial Intelligence-Based Displacement Capacity Prediction Tool for Three-Dimensional Printed Concrete Walls - Nefs Karsten, Sloots Joes, Kroon Kim, Bos Freek et al. (2024-05)
Analytical Modeling of the Orientation-Dependency of 3D Printed SHCC at Increasing Levels of Scale - Nefs Karsten, Kroon Kim, Sloots Joes, Bos Freek et al. (2024-03)
Orientation-Dependency of 3D Printed SHCC at Increasing Length Scale - Lyu Qifeng, Dai Pengfei, Zong Meirong, Zhu Pinghua et al. (2023-10)
Plant-Germination Ability and Mechanical Strength of 3D Printed Vegetation Concrete Bound with Cement and Soil - Živković Milijana, Žujović Maša, Milošević Jelena (2023-09)
Architectural 3D Printed Structures Created Using Artificial Intelligence:
A Review of Techniques and Applications - Quah Tan, Tay Yi, Lim Jian, Tan Ming et al. (2023-03)
Concrete 3D Printing:
Process-Parameters for Process-Control, Monitoring and Diagnosis in Automation and Construction
BibTeX
@article{nefs_menk_bos_suik.2023.AISo3PFCMSUaNN,
author = "Karsten Nefs and Vlado Menkovski and Freek Paul Bos and Akke S. J. Suiker and Theo A. M. Salet",
title = "Automated Image Segmentation of 3D Printed Fibrous Composite Micro-Structures Using a Neural Network",
doi = "10.1016/j.conbuildmat.2022.130099",
year = "2023",
journal = "Construction and Building Materials",
volume = "365",
}
Formatted Citation
K. Nefs, V. Menkovski, F. P. Bos, A. S. J. Suiker and T. A. M. Salet, “Automated Image Segmentation of 3D Printed Fibrous Composite Micro-Structures Using a Neural Network”, Construction and Building Materials, vol. 365, 2023, doi: 10.1016/j.conbuildmat.2022.130099.
Nefs, Karsten, Vlado Menkovski, Freek Paul Bos, Akke S. J. Suiker, and Theo A. M. Salet. “Automated Image Segmentation of 3D Printed Fibrous Composite Micro-Structures Using a Neural Network”. Construction and Building Materials 365 (2023). https://doi.org/10.1016/j.conbuildmat.2022.130099.