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Crack Detection and Segmentation Using Deep Learning with 3D Reality Mesh Model for Quantitative Assessment and Integrated Visualization

机译:使用深度学习和3D现实网格模型进行裂纹检测和分割以进行定量评估和集成可视化

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Crack detection has been an active research topic for civil infrastructure inspection. Over the last few years, many research efforts have focused on applying deep learning-based techniques to automatically detect cracks in images. Good results have been reported with bounding boxes around the detected cracks in images. However, there is no accurate crack segmentation, quantitative assessment, or integrated visualization in the context of engineering structures. In addition, most previously developed deep learning-based crack detection models have been trained with homogenous images collected under controlled conditions, rather than applying the models to images collected during real-world infrastructure inspections. In this paper, two deep learning-based approaches are developed for crack detection and segmentation. The first approach is to integrate the faster region-based convolutional neural network (FRCNN) with structured random forest edge detection (SRFED). The FRCNN is used to detect cracks with bounding boxes while SRFED is applied to segment the cracks within the boxes. The second approach is to directly apply Mask RCNN for crack detection and segmentation. The models have been trained with diverse images collected during real-world infrastructure inspections, enhancing the broad applicability of the models. Both approaches have been applied in a unified framework using three-dimensional (3D) reality mesh-modeling technology that enables quantitative assessment with the integrated visualization of an inspected structure. The effectiveness and robustness of the developed techniques are evaluated and demonstrated using various real cases including bridges, road pavements, underground tunnels, water towers, and buildings.
机译:裂缝检测一直是民用基础设施检查的活跃研究主题。在过去的几年中,许多研究工作都集中在应用基于深度学习的技术来自动检测图像中的裂缝。据报道,在图像中检测到的裂纹周围有包围盒,结果良好。但是,在工程结构的情况下,没有精确的裂缝分割,定量评估或集成可视化的功能。此外,大多数以前开发的基于深度学习的裂缝检测模型都使用在受控条件下收集的均匀图像进行了训练,而不是将模型应用于在实际基础结构检查期间收集的图像。本文针对裂纹检测和分割开发了两种基于深度学习的方法。第一种方法是将基于区域的快速卷积神经网络(FRCNN)与结构化随机森林边缘检测(SRFED)集成在一起。 FRCNN用于检测带有边界框的裂缝,而SRFED用于将框内的裂缝分段。第二种方法是将Mask RCNN直接应用于裂缝检测和分割。这些模型已经通过在实际基础架构检查期间收集的各种图像进行了训练,从而增强了模型的广泛适用性。两种方法均已在使用三维(3D)现实网格建模技术的统一框架中应用,该技术可通过对被检查结构的集成可视化进行定量评估。使用各种实际情况(包括桥梁,路面,地下隧道,水塔和建筑物)评估并证明了所开发技术的有效性和鲁棒性。

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