面向油气管道巡检的弱监督图像显著性目标检测方法

Weakly supervised image salient object detection for oil and gas pipeline inspection

  • 摘要:
    目的 管道安全监测正在从事后排查迈向实时预警,对快速、准确的异常定位提出更高要求。图像显著性目标检测(Image Salient Object Detection, ISOD)能够快速定位图像中的关键区域,具备良好的应用潜力,但存在标注成本高、目标形态复杂、样本不均衡等挑战。在油气管道巡检任务中,像素级真实标注成本高、获取难度大,且现有公开数据集匮乏。弱监督图像显著性目标检测(Weakly Supervised Image Salient Object Detection, WSISOD)可在弱标注条件下完成显著区域学习,因此具备降低标注成本与提升跨场景泛化的潜力。
    方法 提出一种面向油气管道巡检的弱监督图像显著性目标检测方法。首先,针对油气管道具有保密性质、缺乏公开数据集的特殊性,构建了包含1 000张图像的油气管道遥感图像显著性目标检测数据集(Remote Sensing Oil and Gas Pipeline Salient Object Dataset Detection, RSOGP-SODD);其次,基于分割大模型(Segment Anything Model 2, SAM2),使用多框联合推理机制将低成本的边界框标注转化为高质量伪标签;最后,以针对遥感图像优化的异构特征协作网络(Heterogeneous Feature Collaboration Network, HFCNet)作为主干网络,采用伪标签迭代优化提升模型精度。
    结果 根据RSOGP-SODD数据集上的实验结果表明,在无像素级真实标注的情况下,该方法的S-measure、E-measure分别达到0.749 1、0.830 9。与全监督方法相比,弱监督模型仅有约14%的性能损失,却显著降低了人工标注成本,同时在复杂遥感场景中具备较好的结构保持能力与边界感知能力。
    结论 面向油气管道巡检的弱监督图像显著性目标检测方法为油气管道的智能化巡检提供了低成本、高效率的可行方案。未来可进一步提升伪标签边界细节质量,引入多模态信息或主动学习机制,以增强模型在复杂地理环境与多类型管道场景下的泛化能力,并将该框架拓展至管道缺陷识别、泄漏监测等更具实际价值的工程应用中。

     

    Abstract:
    Objective Pipeline safety monitoring is evolving from post-event inspection to real-time early warning, demanding faster and more accurate anomaly localization. Image Salient Object Detection (ISOD) effectively identifies key image regions and holds significant application potential but faces challenges like high annotation costs, complex object shapes, and sample imbalance. In oil and gas pipeline inspection, pixel-level ground-truth annotations are costly and scarce, with limited public datasets. Weakly Supervised Image Salient Object Detection (WSISOD) addresses these issues by learning salient regions from weak annotations, reducing annotation costs and enhancing cross-scene generalization.
    Methods A weakly supervised image salient object detection method for oil and gas pipeline inspection was proposed. First, considering the confidentiality of oil and gas pipelines and the lack of public datasets, the Remote Sensing Oil and Gas Pipeline Salient Object Detection Dataset (RSOGP-SODD), containing 1,000 images, was constructed. Second, based on the Segment Anything Model 2 (SAM2), a multi-box joint inference mechanism was adopted to convert low-cost bounding box annotations into high-quality pseudo-labels. Finally, the Heterogeneous Feature Collaboration Network (HFCNet), optimized for remote sensing images, was used as the backbone network, and iterative optimization of pseudo-labels was employed to improve model accuracy.
    Results Experimental results on the RSOGP-SODD dataset demonstrated that, without pixel-level ground-truth annotations, the proposed method achieved S-measure and E-measure scores of 0.749 1 and 0.830 9, respectively. Compared to fully supervised methods, the weakly supervised model showed only about a 14% performance decrease while significantly reducing manual annotation costs. Additionally, the model exhibited robust structure preservation and boundary detection capabilities in complex remote sensing scenes.
    Conclusion The proposed weakly supervised image salient object detection method offers a feasible, cost-effective, and efficient solution for intelligent oil and gas pipeline inspection. Future work can focus on enhancing the boundary detail quality of pseudo-labels, integrating multimodal data and active learning to improve model generalization across complex geographic and multi-pipeline scenes, and extending the framework to practical engineering applications such as pipeline defect detection and leakage monitoring.

     

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