To address the issues of weak correlation between multi-view features, low recognition accuracy of small-scale targets, and insufficient robustness in complex scenarios in underground pipeline detection using 3D GPR, this paper proposes a 3D pipeline intelligent detection framework. First, based on a B/C/D-Scan three-view joint analysis strategy, a three-dimensional pipeline three-view feature evaluation method is established by cross-validating forward simulation results obtained using FDTD methods with actual measurement data. Second, the DCO-YOLO framework is proposed, which integrates DySample, CGLU, and OutlookAttention cross-dimensional correlation mechanisms into the original YOLOv11 algorithm, significantly improving the small-scale pipeline edge feature extraction capability. Furthermore, a 3D-DIoU spatial feature matching algorithm is proposed, which integrates three-dimensional geometric constraints and center distance penalty terms to achieve automated association of multi-view annotations. The three-view fusion strategy resolves inherent ambiguities in single-view detection. Experiments based on real urban underground pipeline data show that the proposed method achieves accuracy, recall, and mean average precision of 96.2%, 93.3%, and 96.7%, respectively, in complex multi-pipeline scenarios, which are 2.0%, 2.1%, and 0.9% higher than the baseline model. Ablation experiments validated the synergistic optimization effect of the dynamic feature enhancement module and Grad-CAM++ heatmap visualization demonstrated that the improved model significantly enhanced its ability to focus on pipeline geometric features. This study integrates deep learning optimization strategies with the physical characteristics of 3D GPR, offering an efficient and reliable novel technical framework for the intelligent recognition and localization of underground pipelines.
翻译:针对三维探地雷达地下管线探测中多视角特征关联性弱、小尺度目标识别精度低、复杂场景鲁棒性不足的问题,本文提出一种三维管线智能检测框架。首先,基于B/C/D-Scan三视图联合分析策略,通过时域有限差分法正演模拟结果与实测数据的交叉验证,建立了三维管线三视图特征评估方法。其次,提出DCO-YOLO框架,将DySample、CGLU与OutlookAttention跨维度关联机制集成至原始YOLOv11算法中,显著提升了小尺度管线边缘特征提取能力。进一步提出3D-DIoU空间特征匹配算法,融合三维几何约束与中心距惩罚项,实现多视角标注的自动关联。三视图融合策略有效解决了单视图检测固有的模糊性问题。基于真实城市地下管线数据的实验表明,所提方法在复杂多管线场景下的准确率、召回率与平均精度均值分别达到96.2%、93.3%和96.7%,较基线模型提升2.0%、2.1%和0.9%。消融实验验证了动态特征增强模块的协同优化效果,Grad-CAM++热力图可视化表明改进模型显著增强了对管线几何特征的关注能力。本研究将深度学习优化策略与三维探地雷达物理特性相结合,为地下管线智能识别与定位提供了高效可靠的新型技术框架。