1.重庆大学土木工程学院, 重庆 400045
2.山区土木工程安全与韧性全国重点实验室, 重庆 400045
3.广州地铁建设管理有限公司, 广东 广州 510010
4.中铁十一局集团有限公司,湖北 武汉 430061
5.重庆大学航空航天学院, 重庆 400045
6.湖南工程学院土木工程智能防灾减灾与生态修复湖南省重点实验室, 湖南 湘潭, 411104
田城航(2001—),男,硕士研究生。主要从事城市地下工程研究。E-mail: tch2001@163.com
仉文岗(1983—),男,教授,博士。主要从事城市地下工程研究。E-mail: zhangwg@cqu.edu.cn
收稿:2025-03-27,
修回:2025-06-09,
纸质出版:2025-12-28
移动端阅览
田城航,赵力萌,李永刚等.基于改进YOLOv8的隧道渗漏水轻量化检测[J].防灾减灾工程学报,2025,45(06):1421-1433.
TIAN Chenghang,ZHAO Limeng,LI Yonggang,et al.Lightweight Detection of Tunnel Water Leakage Based on Improved YOLOv8 Model[J].Journal of Disaster Prevention and Mitigation Engineering,2025,45(06):1421-1433.
田城航,赵力萌,李永刚等.基于改进YOLOv8的隧道渗漏水轻量化检测[J].防灾减灾工程学报,2025,45(06):1421-1433. DOI: 10.13409/j.cnki.jdpme.20250430038.
TIAN Chenghang,ZHAO Limeng,LI Yonggang,et al.Lightweight Detection of Tunnel Water Leakage Based on Improved YOLOv8 Model[J].Journal of Disaster Prevention and Mitigation Engineering,2025,45(06):1421-1433. DOI: 10.13409/j.cnki.jdpme.20250430038.
针对隧道渗漏水检测中传统方法效率低、现有深度学习模型参数量大且实时性不足的问题,提出一种基于改进YOLOv8n‑seg的轻量化实例分割模型。通过引入Coordinate Attention(CA)注意力机制增强目标区域特征权重,采用MobileNetV4替换主干网络以降低计算复杂度,并结合EfficientHead分割头优化特征解码效率,显著提升了模型在复杂背景下的检测精度与推理速度。实验基于三维激光扫描技术构建的隧道渗漏水数据集(包含3140张增强图像),通过消融实验验证了各模块的有效性:CA机制使平均精度(AP)提升0.82%,MobileNetV4降低参数量43.2%的同时提升AP至81.21%,EfficientHead分割头进一步优化分割细节。联合改进后,模型AP达83.21%,F1值提升至78.53%,参数量仅1.96 M,推理速度达355.2 FPS,较原YOLOv8n‑seg提升6.6%。对比实验表明,改进模型在轻量化指标(参数量、GFLOPs)显著优于Mask R‑CNN等主流模型,且精度接近两阶段方法,满足隧道渗漏水实时检测需求。研究为隧道结构健康监测提供了高效、可靠的轻量化解决方案,具有工程应用价值。
To address the challenges of low efficiency in traditional methods for tunnel water leakage detection and the large number of parameters and insufficient real-time performance of existing deep learning models
this study proposed a lightweight instance segmentation model based on an improved YOLOv8n-seg. The coordinate attention (CA) mechanism was introduced to enhance feature representation in target regions. The backbone network was replaced with MobileNetV4 to reduce computational complexity
and the EfficientHead segmentation head was incorporated to improve the efficiency of feature decoding. These improvements collectively enhanced both detection accuracy and inference speed in complex environments. The experiments were conducted on a tunnel water leakage dataset constructed using 3D laser scanning (including 3 140 enhanced images). Ablation experiments were employed to validate the effectiveness of each module. The CA mechanism increased the average precision (AP) by 0.82%
MobileNetV4 increased the AP to 81.21% while reducing the number of parameters by 43.2%
and the EfficientHead further optimized segmentation details. After joint improvements
the model achieved an AP of 83.21%
an F1-score of 78.53%
a number of parameters of 1.96M
and an inference speed of 355.2 FPS
representing a 6.6% increase over the original YOLOv8n-seg. Comparative experiments demonstrated that the proposed model significantly outperformed mainstream models such as Mask R-CNN in lightweight indicators (number of parameters and GFLOPs)
while achieving accuracy comparable to that of two-stage methods
thereby meeting the real-time detection requirement for tunnel water leakage. This study provides an efficient and reliable lightweight solution for structural health monitoring in tunnels
offering practical value for engineering applications.
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