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COCO-Bridge: Structural Detail Data Set for Bridge Inspections

机译:Coco-Bridge:用于桥接检查的结构细节数据集

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The purpose of this research is to propose a means to address two issues faced by unmanned aerial vehicles (UAVs) during bridge inspection. The first issue is that UAVs have a notoriously difficult time operating near bridges. This is because of the potential for the navigation signal to be lost between the operator and the UAV. Therefore, there is a push to automate or semiautomate the UAV inspection process. One way to improve automation is by improving UAVs' ability to contextualize their environment through object detection and object avoidance. The second issue is that, to the best of the authors' knowledge, no method has been developed to automatically contextualize detected defects to a structural bridge detail during or after UAV flight. Significant research has been conducted on UAVs' ability to detect defects, like cracks and corrosion. However, detecting the presence of a defect alone does not contextualize its significance or help with an inspector's job to rate specific structural bridge details. This paper outlines a use case for a data set and model to detect critical structural bridge details, providing context and vision for enhancing the autonomous UAV bridge inspection process. Identifying these structural bridge details that require inspection may assist an UAV in path planning and object avoidance in GPS-denied environments. The detection of structural details adds an ability to contextualize defect detection and localize issues to a bridge detail. This also has implications for providing cues to inspectors, in real time, on defect-susceptible areas while UAVs are in flight. The image data set, Common Objects in Context for bridge inspection (COCO-Bridge), for UAV object detection was collected and then trained using deep learning techniques. This data set consists of 774 images and over 2,500 object instances to detect 4 structural bridge details: bearings, cover plate terminations, gusset plate connections, and out-of-plane stiffeners. These details were chosen because they either must be rated by an inspector or checked because they are prone to failure. Methods to economize the predictive capabilities of the model through image augmentation were investigated to extend the performance of the training images. It was concluded that for this domain of data, structural bridge detail images, the mean average precision, and F1 score performance were improved by mirroring the training images along their y-axis. The outcome of this paper was an open-source annotated data set, which can be used in computer vision applications for visual inspection, growing the capabilities of artificial intelligence in structural engineering. (C) 2021 American Society of Civil Engineers.
机译:本研究的目的是提出一种方法,以解决在桥梁检查期间无人驾驶飞行器(无人机)面临的两个问题。第一个问题是,无人机在桥梁附近经营着令人难度的困难时光。这是因为导航信号在操作员和UAV之间丢失的可能性。因此,有一个推动自动化或半utmate保护UAV检查过程。提高自动化的一种方法是通过改善无人机通过对象检测和对象避免来形成环境的能力。第二个问题是,据作者的知识,没有开发任何方法,以在无人机航班期间或之后自动地将检测到的缺陷进行对结构桥梁详细信息。对无人机的检测缺陷的能力进行了重大研究,如裂缝和腐蚀。然而,检测单独的缺陷的存在并不是对衡量特定结构桥接细节的检查员的作业来控制其意义或帮助。本文概述了数据集和模型的用例,以检测关键结构桥接详细信息,为增强自主无人机桥检查过程提供上下文和视觉。识别需要检查的结构桥接细节可以在GPS拒绝环境中提供路径规划和对象避免的无人机。对结构细节的检测增加了将缺陷检测和本地化问题的能力添加到桥梁详细信息中。这也有助于在无人机飞行中实时向检查员提供缺陷敏感区域的提示。收集用于UAV对象检测的桥接检查(COCO-Bridge)上下文中的常见对象,然后使用深度学习技术训练。该数据集包括774个图像和超过2,500个对象实例来检测4个结构桥接细节:轴承,盖板终端,角撑板连接和外平面的加强件。选择这些细节,因为它们必须由检查员或检查所需的评级,因为它们易于失败。调查通过图像增强节约模型预测能力的方法,以扩展训练图像的性能。得出结论,对于该数据的域,结构桥详细图像,平均精度和F1分数性能通过沿其Y轴镜像来改善。本文的结果是开源注释数据集,可用于电脑视觉应用,用于视觉检查,日益增加结构工程中人工智能的能力。 (c)2021年美国土木工程师协会。

著录项

  • 来源
    《Journal of Computing in Civil Engineering》 |2021年第3期|04021003.1-04021003.13|共13页
  • 作者单位

    Virginia Tech Charles E Via Jr Dept Civil & Environm Engn Blacksburg VA 24060 USA;

    Virginia Tech Bradley Dept Elect & Comp Engn Blacksburg VA 24060 USA;

    Univ Maryland Dept Comp Sci College Pk MD 20742 USA;

    Virginia Tech Charles E Via Jr Dept Civil & Environm Engn Blacksburg VA 24060 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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