Wang Haozheng, Wang Qiang, Zhang Weikang, Zhai Junli, Yuan Dongyang, Tong Junhao, Xie Xiongyao, Zhou Biao, Tian Hao
Zhejiang Scientific Research Institute of Transport, Hangzhou 311305, China.
Key Laboratory of Road and Bridge Detection and Maintenance Technology of Zhejiang Province, Hangzhou 311305, China.
Materials (Basel). 2025 Jan 1;18(1):142. doi: 10.3390/ma18010142.
As highway tunnel operations continue over time, structural defects, particularly cracks, have been observed to increase annually. Coupled with the rapid expansion of tunnel networks, traditional manual inspection methods have proven inadequate to meet current demands. In recent years, machine vision and deep learning technologies have gained significant attention in civil engineering for the detection and analysis of structural defects. However, rapid and accurate defect identification in highway tunnels presents challenges due to complex background conditions, numerous interfering factors, and the relatively low proportion of cracks within the structure. Additionally, the intensive labor requirements and limited efficiency in labeling training datasets for deep learning pose significant constraints on the deployment of intelligent crack segmentation algorithms. To address these limitations, this study proposes an automatic labeling and optimization algorithm for crack sample sets, utilizing crack features and the watershed algorithm to enable efficient automated segmentation with minimal human input. Furthermore, the deep learning-based crack segmentation network was optimized through comparative analysis of various network depths and residual structure configurations to achieve the best possible model performance. Enhanced accuracy was attained by incorporating axis extraction and watershed filling algorithms to refine segmentation outcomes. Under diverse lining surface conditions and multiple interference factors, the proposed approach achieved a crack segmentation accuracy of 98.78%, with an Intersection over Union (IoU) of 72.41%, providing a robust solution for crack segmentation in tunnels with complex backgrounds.
随着公路隧道运营时间的延续,已观察到结构缺陷,尤其是裂缝,每年都在增加。再加上隧道网络的迅速扩张,传统的人工检查方法已被证明不足以满足当前需求。近年来,机器视觉和深度学习技术在土木工程中用于结构缺陷的检测和分析受到了广泛关注。然而,由于背景条件复杂、干扰因素众多以及结构中裂缝所占比例相对较低,在公路隧道中快速准确地识别缺陷面临挑战。此外,深度学习标注训练数据集所需的高强度人力以及有限的效率,对智能裂缝分割算法的部署构成了重大限制。为解决这些局限性,本研究提出了一种裂缝样本集自动标注与优化算法,利用裂缝特征和分水岭算法,以最少的人工干预实现高效的自动分割。此外,通过对各种网络深度和残差结构配置进行对比分析,对基于深度学习的裂缝分割网络进行了优化,以实现最佳的模型性能。通过结合轴提取和分水岭填充算法来细化分割结果,提高了准确性。在不同的衬砌表面条件和多种干扰因素下,所提出的方法实现了98.78%的裂缝分割准确率,交并比(IoU)为72.41%,为复杂背景隧道中的裂缝分割提供了一个可靠的解决方案。