Self-supervised multi-scale transformer with Attention-Guided Fusion for efficient crack detection

IF 11.5 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Blessing Agyei Kyem, Joshua Kofi Asamoah, Eugene Denteh, Andrews Danyo, Armstrong Aboah
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Abstract

Pavement crack detection has long depended on costly and time-intensive pixel-level annotations, which limit its scalability for large-scale infrastructure monitoring. To overcome this barrier, this paper examines the feasibility of achieving effective pixel-level crack segmentation entirely without manual annotations. Building on this objective, a fully self-supervised framework, Crack-Segmenter, is developed, integrating three complementary modules: the Scale-Adaptive Embedder (SAE) for robust multi-scale feature extraction, the Directional Attention Transformer (DAT) for maintaining linear crack continuity, and the Attention-Guided Fusion (AGF) module for adaptive feature integration. Through evaluations on ten public datasets, Crack-Segmenter consistently outperforms 13 state-of-the-art supervised methods across all major metrics, including mean Intersection over Union (mIoU), Dice score, XOR, and Hausdorff Distance (HD). These findings demonstrate that annotation-free crack detection is not only feasible but also superior, enabling transportation agencies and infrastructure managers to conduct scalable and cost-effective monitoring. This work advances self-supervised learning and motivates pavement cracks detection research.
基于注意力引导融合的自监督多尺度变压器裂纹检测方法
路面裂缝检测一直依赖于昂贵且耗时的像素级标注,这限制了其在大规模基础设施监测中的可扩展性。为了克服这一障碍,本文研究了在完全不需要人工注释的情况下实现有效的像素级裂缝分割的可行性。基于这一目标,开发了一个完全自监督的框架,裂纹分割器,集成了三个互补模块:用于鲁棒多尺度特征提取的尺度自适应嵌入器(SAE),用于保持线性裂纹连续性的定向注意力转换器(DAT),以及用于自适应特征集成的注意力引导融合(AGF)模块。通过对10个公共数据集的评估,裂缝分割器在所有主要指标上都始终优于13种最先进的监督方法,包括平均交叉交叉(mIoU)、骰子分数、异或和豪斯多夫距离(HD)。这些研究结果表明,无标注裂缝检测不仅可行,而且具有优越性,使交通机构和基础设施管理人员能够进行可扩展且具有成本效益的监测。这项工作推进了自监督学习,激励了路面裂缝检测研究。
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来源期刊
Automation in Construction
Automation in Construction 工程技术-工程:土木
CiteScore
19.20
自引率
16.50%
发文量
563
审稿时长
8.5 months
期刊介绍: Automation in Construction is an international journal that focuses on publishing original research papers related to the use of Information Technologies in various aspects of the construction industry. The journal covers topics such as design, engineering, construction technologies, and the maintenance and management of constructed facilities. The scope of Automation in Construction is extensive and covers all stages of the construction life cycle. This includes initial planning and design, construction of the facility, operation and maintenance, as well as the eventual dismantling and recycling of buildings and engineering structures.
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