Dong Xuwei, Yuan Jiashuo, Dai Jinpeng
Key Laboratory of Opto-Electronic Technology and Intelligent Control, Ministry of Education, Lanzhou Jiaotong University, Lanzhou 730070, China.
National and Provincial Joint Engineering Laboratory of Road & Bridge Disaster Prevention and Control, Lanzhou Jiaotong University, Lanzhou 730070, China.
Sensors (Basel). 2025 May 23;25(11):3276. doi: 10.3390/s25113276.
Bridge crack detection is a key factor in ensuring the safety and extending the lifespan of bridges. Traditional detection methods often suffer from low efficiency and insufficient accuracy. The development of computer vision has gradually made bridge crack detection methods based on deep learning to become a research hotspot. In this study, a lightweight bridge crack detection algorithm, YOLO11-Bridge Detection (YOLO11-BD), is proposed based on the optimization of the YOLO11 model. This algorithm uses an efficient multiscale conv all (EMSCA) module to enhance channel and spatial attention, thereby strengthening its ability to extract crack features. Additionally, the algorithm improves detection accuracy without increasing the model size. Furthermore, a lightweight detection head (LDH) is introduced to process feature information from different channels using efficient grouped convolutions. It reduces the model's parameters and computations whilst preserving accuracy, thereby achieving a lightweight model. Experimental results show that compared with the original YOLO11, the YOLO11-BD algorithm improves mAP50 and mAP50-95 on the bridge crack dataset by 3.1% and 4.8%, respectively, whilst significantly reducing GFLOPs by 19.05%. Its frame per second remains higher than 500, demonstrating excellent real-time detection capability and high computational efficiency. The algorithm proposed in this study provides an efficient and flexible solution for the monitoring of bridge cracks using remote sensing devices such as drones, and it has significant practical application value. Its lightweight design ensures strong cross-platform adaptability and provides reliable technical support for intelligent bridge management and maintenance.
桥梁裂缝检测是确保桥梁安全和延长其使用寿命的关键因素。传统检测方法往往效率低下且准确性不足。计算机视觉的发展逐渐使基于深度学习的桥梁裂缝检测方法成为研究热点。在本研究中,基于YOLO11模型的优化,提出了一种轻量级桥梁裂缝检测算法,即YOLO11-桥梁检测(YOLO11-BD)。该算法使用高效多尺度卷积注意力(EMSCA)模块来增强通道和空间注意力,从而提高其提取裂缝特征的能力。此外,该算法在不增加模型大小的情况下提高了检测精度。此外,引入了轻量级检测头(LDH),使用高效分组卷积来处理来自不同通道的特征信息。它在保持准确性的同时减少了模型的参数和计算量,从而实现了轻量级模型。实验结果表明,与原始YOLO11相比,YOLO11-BD算法在桥梁裂缝数据集上的mAP50和mAP50-95分别提高了3.1%和4.8%,同时显著降低了19.05%的GFLOPs。其每秒帧数保持高于500,展示了出色的实时检测能力和高计算效率。本研究提出的算法为使用无人机等遥感设备监测桥梁裂缝提供了一种高效灵活的解决方案,具有重要的实际应用价值。其轻量级设计确保了强大的跨平台适应性,为智能桥梁管理和维护提供了可靠的技术支持。