基于语义分割的管沟回填质量智能评估方法

Intelligent evaluation method for pipe trench backfill quality based on semantic segmentation

  • 摘要: 人工智能技术在智慧油田领域已实现快速发展。然而,在燃气管道管沟回填施工质量检测方面,仍缺乏高效、准确的评估手段,导致检测效率低、精度不足,进而引发回填土沉降、管道受力不均等工程问题。为此,本文提出一种基于语义分割的管沟回填质量智能评估方法。具体来说,构建了残差特征融合注意力分割网络(Residual Feature Fusion Attention Segmentation Network,RFFA-SegNet),能够利用残差结构提取碎石、碎砖等混杂物的深层特征;同时,引入融合注意力机制,增强模型对混杂物边缘的表征能力;此外,结合迁移学习策略,缩短训练周期,有效提升了模型的泛化能力。在包含1 060幅实地采集图像的数据集上进行的实验表明,本文算法能够达到99.65%的准确率和23.08的帧率(Frames Per Second, FPS)的处理速度,与基线算法相比分别提升了3.02%和11.71,整体性能优于多数主流分割模型。本文所提方法能够显著改善传统检测中边缘模糊、目标粘连、误检漏检等问题,实现回填混杂物的精准快速分割,为混杂物粒径测量与均匀度量化分析提供了可靠技术支撑,为燃气管道管沟回填质量智能评估提供了新路径,可为挖掘机器人施工反馈调控提供有效参考。

     

    Abstract: Artificial intelligence has rapidly advanced in smart oilfield applications. However, efficient and accurate methods for inspecting gas pipeline trench backfill quality remain lacking. This results in low inspection efficiency and accuracy, causing issues such as backfill soil settlement and uneven pipeline stress. To address these challenges, an intelligent evaluation method was proposed for trench backfill quality based on semantic segmentation. Specifically, a Residual Feature Fusion Attention Segmentation Network (RFFA-SegNet) was developed to extract deep features of debris such as crushed stones and bricks using a residual structure. The integration of a fusion attention mechanism further enhanced the model's ability to delineate debris edges. Additionally, a transfer learning strategy was employed to reduce training time and improve the model's generalization. Experiments on a field-collected dataset of 1 060 images demonstrated that the proposed algorithm achieved an accuracy of 99.65% and a processing speed of 23.08 frames per second (FPS). Compared to the baseline, accuracy improved by 3.02% and FPS by 11.71, outperforming most mainstream segmentation models. The proposed method significantly addresses traditional detection issues such as blurred edges, target adhesion, false positives, and false negatives. It enables accurate and rapid segmentation of backfill debris, providing reliable technical support for particle size measurement and quantitative analysis of debris uniformity. This approach offers a novel solution for intelligent evaluation of gas pipeline trench backfill quality and serves as an effective reference for feedback control in excavator robot construction.

     

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