Semi-supervised crack detection using segment anything model and deep transfer learning

IF 9.6 1区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Automation in Construction Pub Date : 2024-12-11 DOI:10.1016/j.autcon.2024.105899
Jiale Li, Chenglong Yuan, Xuefei Wang, Guangqi Chen, Guowei Ma
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Abstract

Computer vision models have shown great potential in pavement distress detection. There is still challenge of low robustness under different scenarios. The model robustness is enhanced with more annotated data. However, this approach is labor-intensive and not a sustainable long-term solution. This paper proposes a semi-supervised instance segmentation method for road distress detection based on deep transfer learning. The interactive segmentation method utilizing SAM are used to enhance the production efficiency of segmentation datasets. The DCNv3 and lightweight segmentation heads are strategically designed to offset potential speed losses. The deep transfer learning method fine-tunes the pre-trained models, enhancing their competency for new tasks. The proposed model achieves comparable performance to supervised learning with fewer annotated data, accurately determining crack dimensions across varied scenarios. This paper provides an efficient and practical approach for pavement distress identification using the hybrid computer vision methodology.
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基于分段任意模型和深度迁移学习的半监督裂纹检测
计算机视觉模型在路面破损检测中显示出巨大的潜力。在不同的场景下仍然存在低鲁棒性的挑战。随着标注数据的增加,模型的鲁棒性得到增强。然而,这种方法是劳动密集型的,不是一个可持续的长期解决方案。提出了一种基于深度迁移学习的道路遇险检测半监督实例分割方法。采用基于SAM的交互式分割方法,提高了分割数据集的生成效率。DCNv3和轻量级分段磁头的设计是为了抵消潜在的速度损失。深度迁移学习方法对预训练的模型进行微调,提高它们对新任务的能力。该模型在使用较少注释数据的情况下实现了与监督学习相当的性能,准确地确定了不同场景下的裂纹尺寸。本文提出了一种基于混合计算机视觉的路面破损识别方法。
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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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