Class-wise histogram matching-based domain adaptation in deep learning-based bridge element segmentation

被引:0
作者
Mondal, Tarutal Ghosh [1 ,2 ]
Shi, Zhenhua [1 ]
Zhang, Haibin [1 ]
Chen, Genda [1 ]
机构
[1] Missouri Univ Sci & Technol, INSPIRE Univ Transportat Ctr, Ctr Intelligent Infrastruct CII, Dept Civil Architectural & Environm Engn, Rolla, MO 65409 USA
[2] Indian Inst Technol Bhubaneswar, Sch Infrastruct, Bhubaneswar 752050, Odisha, India
关键词
Bridge component segmentation; Deep learning; Domain gap; Domain adaptation; Histogram matching; Adversarial learning; Generator; Domain discriminator; COMPONENT;
D O I
10.1007/s13349-025-00922-0
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
This study focused on the problem of domain shift in deep learning-based bridge element segmentation. The impracticability of accounting for all possible variabilities vis-& agrave;-vis structural shape, size, color, texture, illumination, and other operational conditions in the training process leads to the deterioration in the model performance when applied to test data from novel unseen domains. In such situations, rebuilding the model with labeled training data from the target domain becomes prohibitively expensive and time-consuming in many practical cases. Recent advancements in unsupervised domain adaptation techniques are known to provide viable solutions to this problem. However, it was observed in this study that the performance gain afforded by the domain adaptation techniques is not significant enough to adequately close the domain gaps commonly encountered in vision-based robotic bridge inspections. This study, therefore, proposed a class-wise histogram matching-based data augmentation technique that seeks to complement the domain adaptation strategy, leading to a significantly improved adaptation in situations where no labeled data are available from the target domain. The proposed framework is validated with two case studies concerning deep learning-based bridge element segmentation in inspection images collected by unmanned aerial vehicles (UAVs). It produced a mean intersection-over-union which is 21.2% and 21.3% higher than a benchmark domain adaptation method. In the future, this study can be extended to other relevant application areas, including but not limited to autonomous vision-based bridge defect detection and post-disaster structural reconnaissance.
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页数:17
相关论文
共 53 条
  • [1] ASCE C, 2021, America's infrastructure report card 2021
  • [2] Unsupervised domain adaptation-based crack segmentation using transformer network
    Beyene, Daniel Asefa
    Tran, Dai Quoc
    Maru, Michael Bekele
    Kim, Taeheon
    Park, Solmoi
    Park, Seunghee
    [J]. JOURNAL OF BUILDING ENGINEERING, 2023, 80
  • [3] DeepLab: Semantic Image Segmentation with Deep Convolutional Nets, Atrous Convolution, and Fully Connected CRFs
    Chen, Liang-Chieh
    Papandreou, George
    Kokkinos, Iasonas
    Murphy, Kevin
    Yuille, Alan L.
    [J]. IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2018, 40 (04) : 834 - 848
  • [4] Wheel condition assessment of high-speed trains under various operational conditions using semi-supervised adversarial domain adaptation
    Chen, Si-Xin
    Zhou, Lu
    Ni, Yi-Qing
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2022, 170
  • [5] Self-training with Bayesian neural networks and spatial priors for unsupervised domain adaptation in crack segmentation
    Chun, Pang-jo
    Kikuta, Toshiya
    [J]. COMPUTER-AIDED CIVIL AND INFRASTRUCTURE ENGINEERING, 2024, 39 (17) : 2642 - 2661
  • [6] Deng J, 2009, PROC CVPR IEEE, P248, DOI 10.1109/CVPRW.2009.5206848
  • [7] Feng J, Pavement crack segmentation based on synthetic datasets and unsupervised domain adaptation
  • [8] Ganin Y, 2015, PR MACH LEARN RES, V37, P1180
  • [9] On the application of domain adaptation in structural health monitoring
    Gardner, P.
    Liu, X.
    Worden, K.
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2020, 138
  • [10] Goodfellow I, 2017, Arxiv, DOI arXiv:1701.00160