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An Integrated Deep Learning Framework for CT-Based Mesoscopic Segmentation and Quantitative Analysis of 3D-Printed Concrete (2026-03)

10.1016/j.jobe.2026.115869

Zhao Qiliang, Huang Yuxiang, Wang Bowen, Zhang Qiuchi, Antwi-Afari Maxwell, Zhao Weijian,  Sun Bochao
Journal Article - Journal of Building Engineering, No. 115869

Abstract

Three-dimensional printed concrete (3DPC) technology offers a rapid and efficient approach to enhancing infrastructure engineering. However, the quantitative analysis of 3DPC mesostructures, especially for accurate segmentation of computed tomography (CT) images, remains challenging due to the limitations of conventional threshold-based segmentation methods, which often rely on manual parameter tuning and lack robustness under complex imaging conditions. This study addresses this gap by developing an advanced deep learning framework for the semantic segmentation of 3DPC CT images. Four representative deep learning models—Fully Convolutional Networks (FCN), U-Net, DeepLabv3+, and PointRend—were evaluated for their performance on 3DPC CT image segmentation. Among these models, U-Net exhibited superior performance across multiple metrics, including pixel accuracy, mean Intersection over Union (mIoU), Frequency Weighted Intersection over Union (FwIoU), and recall. To further enhance segmentation fidelity, the selected U-Net model was augmented through the integration of transfer learning and the incorporation of attention mechanisms. Experimental validation confirmed that the proposed enhancements improved segmentation performance, with notable gains of 3.1% in mean recall, 5.1% in mean intersection over union, and 1.9% in pixel accuracy, underscoring the effectiveness of the methodology. In addition, a macroscopic statistical evaluation method was introduced to assess segmentation quality from a geometric perspective, confirming that the enhanced U-Net model accurately preserved feature size distributions and reduced total area errors to 1.33% for voids and 5.31% for unhydrated regions. The proposed method significantly improves segmentation accuracy and processing efficiency for 3DPC CT images, providing a robust solution for the intelligent analysis of 3DPC mesostructures.

BibTeX
@article{zhao_huan_wang_zhan.2026.AIDLFfCBMSaQAo3PC,
  author            = "Qiliang Zhao and Yuxiang Huang and Bowen Wang and Qiuchi Zhang and Maxwell Fordjour Antwi-Afari and Weijian Zhao and Bochao Sun",
  title             = "An Integrated Deep Learning Framework for CT-Based Mesoscopic Segmentation and Quantitative Analysis of 3D-Printed Concrete",
  doi               = "10.1016/j.jobe.2026.115869",
  year              = "2026",
  journal           = "Journal of Building Engineering",
  pages             = "115869",
}
Formatted Citation

Q. Zhao, “An Integrated Deep Learning Framework for CT-Based Mesoscopic Segmentation and Quantitative Analysis of 3D-Printed Concrete”, Journal of Building Engineering, p. 115869, 2026, doi: 10.1016/j.jobe.2026.115869.

Zhao, Qiliang, Yuxiang Huang, Bowen Wang, Qiuchi Zhang, Maxwell Fordjour Antwi-Afari, Weijian Zhao, and Bochao Sun. “An Integrated Deep Learning Framework for CT-Based Mesoscopic Segmentation and Quantitative Analysis of 3D-Printed Concrete”. Journal of Building Engineering, 2026, 115869. https://doi.org/10.1016/j.jobe.2026.115869.