基于细粒度分类的一体化地下排水管道缺陷检测算法研究

Research on integrated sewer pipe defect detection algorithm based on fine-grained classification

  • 摘要: 随着智慧城市的不断建设,缺陷检测在地下排水管道中扮演的角色愈发重要。然而,当前的通用目标检测方法主要面向差异较大目标的识别场景,不能很好地解决地下排水管道缺陷检测场景下存在的缺陷类别间易混淆、缺陷等级差异小的问题。基于此,本文首先探究通用检测方法在管道缺陷检测任务中的存在局限性的原因,从增强模型的细粒度分类性能入手,提出了多尺度细粒度增强方法下的一体化联合学习算法,旨在同时提高模型的缺陷分类和缺陷分级性能。在本文两个自建数据集Sewer-Complete和Sewer-Part上进行大量实验验证了本文所提方法的有效性和泛化性,与多个现有检测方法进行对比实验和可视化分析验证了本方法的先进性。

     

    Abstract: With the continuous development of smart cities, defect detection in sewer pipes has become increasingly crucial. However, current generic object detection methods are primarily tailored to recognition scenarios featuring substantial differences among objects, failing to effectively address the challenges present in defect detection within sewer pipes scenario, characterized by easily confusable defect categories and minimal disparities in defect levels. In light of this, this paper first explores the limitations of generic detection methods in the task of sewer pipes defect detection. Beginning with enhancing the fine-grained classification performance of models, a unified joint learning algorithm under the method of multiscale fine-grained enhancement is proposed, aiming to simultaneously enhance the defect categories classification and defect level classification capabilities of the model. Extensive experiments conducted on two self-constructed datasets, Sewer-Complete and Sewer-Part, validate the effectiveness and generalization ability of the proposed method. Comparative experiments and visual analysis against multiple existing detection methods further validate the superiority of this approach.

     

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