AI Chat Paper
Note: Please note that the following content is generated by AMiner AI. SciOpen does not take any responsibility related to this content.
{{lang === 'zh_CN' ? '文章概述' : 'Summary'}}
{{lang === 'en_US' ? '中' : 'Eng'}}
Chat more with AI
PDF (5 MB)
Collect
Submit Manuscript AI Chat Paper
Show Outline
Outline
Show full outline
Hide outline
Outline
Show full outline
Hide outline
Research Article | Open Access

Research on the segmentation of bridge surface crack images utilizing improved DeepLabv3+

Yeyang Gu1,2Ling Yin1,2Jialei Song1,2Haifeng Chen1,2Zhengwei Ye1,2Xiangyin Chen1,2Fei Zhang1( )
School of Mechanical Engineering, Dongguan University of Technology, Dongguan 523808, China
Guangdong Provincial Key Laboratory of Intelligent Disaster Prevention and Emergency Technologies for Urban Lifeline Engineering, Dongguan University of Technology, Dongguan 523808, China
Show Author Information

Abstract

This study aims to balance performance optimization with model lightweighting for concrete crack segmentation. Firstly, traditional data augmentation techniques, such as image mirroring, were employed to expand the dataset and enhance its diversity, providing richer samples for model training. Second, to improve the training process, we introduced a CE-dice loss function that combines cross-entropy loss and dice loss. This approach effectively addresses class imbalance issues and enhances segmentation performance. Additionally, we designed a multi-scale feature fusion network with dual attention mechanisms to capture crack features at various scales and integrate attention information, further improving accuracy and robustness in crack recognition tasks. To evaluate the proposed method comprehensively, we used traditional quantitative metrics and incorporated neural network interpretability analysis to reveal the underlying mechanisms of model decisions, thereby increasing the transparency and trustworthiness of the model. Experimental results showed that the proposed method achieved a 7.25% improvement in Intersection over Union (IoU) and a 6.33% increase in Recall compared to the original model. Notably, the model size was reduced to just 22 MB, significantly decreasing the file size while maintaining efficient crack recognition capabilities, thus meeting the demand for lightweight models.

References

【1】
【1】
 
 
Lifeline Emergency and Safety
Article number: 9660003

{{item.num}}

Comments on this article

Go to comment

< Back to all reports

Review Status: {{reviewData.commendedNum}} Commended , {{reviewData.revisionRequiredNum}} Revision Required , {{reviewData.notCommendedNum}} Not Commended Under Peer Review

Review Comment

Close
Close
Cite this article:
Gu Y, Yin L, Song J, et al. Research on the segmentation of bridge surface crack images utilizing improved DeepLabv3+. Lifeline Emergency and Safety, 2026, 1(2): 9660003. https://doi.org/10.26599/LLES.2025.9660003

1114

Views

36

Downloads

0

Crossref

Received: 25 April 2024
Revised: 31 July 2024
Accepted: 23 August 2024
Published: 26 March 2026
© The Author(s) 2026. Published by Tsinghua University Press.

Open Access This article is licensed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits use, sharing, distribution and reproduction in any medium, provided the original work is properly cited.