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Towards an automated condition assessment framework of underground sewer pipes based on closed-circuit television (CCTV) images

机译:基于闭路电视(CCTV)图像的地下下水道管道自动化条件评估框架

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摘要

There is a growing trend of using computer vision techniques for interpreting Closed-Circuit Television (CCTV) inspection videos of sewer pipes. Previous studies mainly focus on detecting defect types and locations in CCTV images, yet limited systematic approaches are available for automatically evaluating defect severity and sewer condition with references to existing standards. This study proposes a framework for evaluating defect severity and sewer condition automatically from CCTV images using computer vision methods, which includes (1) required information definition for sewer condition assessment, (2) pipe joint detection and fitting by image processing techniques to obtain cross section area, (3) defect detection and segmentation to obtain defect type, location and area, and (4) evaluation of defect severity and sewer condition. Particularly, three deep learning -based defect detection models are developed, among which the model based on Faster R-CNN (regional convolution neural network) outperforms others with higher accuracy and is used for detecting defect type and location in the image. Meanwhile, an innovative semantic segmentation model is applied for segmenting defects to extract defect area in the image. In the validation, our framework performs well in defect detection with an average precision, recall and F1 of 88.99%, 87.96%, and 88.21% respectively. More importantly, the framework evaluates Operation and Maintenance (O&M) defects more accurately by precise calculation and generates the overall condition gradings that are mostly consistent with professional inspectors, only with an average deviation of 3.06%. Our framework can assist the review of inspection videos and lays the basis for fully automated sewer assessment and maintenance planning in the future. Without constraints on the assessment codes and computer vision methods, the framework is adaptable to evaluating sewer condition in different regions and can achieve better performance by integrating with cutting-edge vision techniques.
机译:使用计算机视觉技术来解释下水道管道的闭路电视(CCTV)检查视频的计算机视觉技术越来越多。以前的研究主要集中在CCTV图像中的缺陷类型和位置,但有限的系统方法可用于自动评估对现有标准的参考资料的缺陷严重程度和下水道条件。本研究提出了一种使用计算机视觉方法自动评估缺陷严重程度和下水道条件的框架,包括(1)所需的下水道条件评估所需的信息定义,(2)通过图像处理技术来获得横截面的管道接头检测和拟合。面积,(3)缺陷检测和分割以获得缺陷类型,位置和面积,(4)缺陷严重程度和下水道条件的评估。特别地,开发了三种深入学习的缺陷检测模型,其中基于更快的R-CNN(区域卷积神经网络)的模型以更高的精度优越,并且用于检测图像中的缺陷类型和位置。同时,施加创新的语义分割模型用于分割缺陷以提取图像中的缺陷区域。在验证中,我们的框架在缺陷检测中表现良好,平均精度,召回和F1分别为88.99%,87.96%和88.21%。更重要的是,该框架通过精确计算更准确地评估操作和维护(O&M)缺陷,并产生与专业检查员大多数一致的整体条件等级,只有3.06%的平均偏差。我们的框架可以协助检验视频的审查,并为未来提供全自动下水道评估和维护计划的基础。没有对评估代码和计算机视觉方法的限制,该框架适用于评估不同区域中的下水道状态,并且可以通过与尖端视觉技术集成来实现更好的性能。

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