方宏远, 马铎, 王念念, 胡浩帮, 董家修. 基于融合卷积神经网络的多种类管道病害检测方法[J]. 北京工业大学学报, 2022, 48(6): 561-571. DOI: 10.11936/bjutxb2021070006
    引用本文: 方宏远, 马铎, 王念念, 胡浩帮, 董家修. 基于融合卷积神经网络的多种类管道病害检测方法[J]. 北京工业大学学报, 2022, 48(6): 561-571. DOI: 10.11936/bjutxb2021070006
    FANG Hongyuan, MA Duo, WANG Niannian, HU Haobang, DONG Jiaxiu. Detection Algorithm for Multiple Underground Pipeline Diseases Based on a Fusion Convolutional Neural Network[J]. Journal of Beijing University of Technology, 2022, 48(6): 561-571. DOI: 10.11936/bjutxb2021070006
    Citation: FANG Hongyuan, MA Duo, WANG Niannian, HU Haobang, DONG Jiaxiu. Detection Algorithm for Multiple Underground Pipeline Diseases Based on a Fusion Convolutional Neural Network[J]. Journal of Beijing University of Technology, 2022, 48(6): 561-571. DOI: 10.11936/bjutxb2021070006

    基于融合卷积神经网络的多种类管道病害检测方法

    Detection Algorithm for Multiple Underground Pipeline Diseases Based on a Fusion Convolutional Neural Network

    • 摘要: 地下管道是城市的血脉,年久失修将会导致管道服役性能降低,引发各种环境问题. 因此,应当按时检测地下管道的病害类型及数量,为管道维修提供数据支持. 但是,人工检测的方法费时费力,传统的计算机检测方法准确度和泛化能力较低. 为了解决这一问题,该文提出了一种基于融合卷积神经网络的多种类地下管道病害分类算法. 该算法结合了Inception网络构架和残差网络构架,提高了检测的准确度. 对比现有的检测模型发现,该模型的平均准确率和Macro-F1分数分别达到了93.15%和0.932,检测评估指标最优,证明该模型具有准确、全面、误检率低的检测特点. 对测试集实际检测结果分析可知,该模型在不同光照、不同障碍物、整体和局部的场景下,均检测无误,结果准确,证明了该模型具有鲁棒性高、泛化能力强的特点.

       

      Abstract: Underground pipelines are the lifeblood of the city. Long-term disrepair results in the degradation of pipeline service performance, causing a variety of environmental problems. Therefore, the type and quantity of underground pipeline diseases should be detected to provide data supporting for pipeline maintenance. However, the method of manual detection is time-consuming and laborious, and the traditional method of computer detection has poor accuracy and low generalization ability. To solve the problem mentioned above, a classification algorithm for multiple underground pipeline diseases based on a fusion convolutional neural network was proposed. The algorithm combined Inception and Residual network architecture to improve detection accuracy. Compared with the existing detection models, the average accuracy and Macro-F1 score of the proposed model reached 93.15% and 0.932, respectively, and the detection evaluation indexes were the best, which proved that the proposed model had the characteristics of accuracy, comprehensiveness, and low error detection rate. By analyzing the actual detection results of the test set with different lighting, obstacles, and overall and local scenes, the results of the proposed model are accurate, which proves that the proposed model has high robustness and strong generalization ability.

       

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