The usage of Unmanned Aerial Vehicles (UAVs) in the context of structural health inspection is recently gaining tremendous popularity. Camera mounted UAVs enable the fast acquisition of a large number of images often used for mapping, 3D model reconstruction, and as an assisting tool for inspectors. Due to the number of images captured during large scale UAV surveys, a manual image-based inspection analysis of entire assets cannot be efficiently performed by qualified engineers. Additionally, comparing defects to past inspections requires the retrieval of relevant images which is often impractical without extensive metadata or computer-vision-based algorithms. In this paper, we propose an end-to-end method for automated structural inspection damage analysis. Using automated object detection and segmentation we accurately localize defects, bridge utilities and elements. Next, given the high overlap in UAV imagery, points of interest are extracted, and defects are located and matched throughout the image database, considerably reducing data redundancy while maintaining a detailed record of the defects. Our technique not only enables fast and robust damage analysis of UAV imagery, as we show herein, but is also effective for analyzing manually acquired images.
翻译:在结构性健康检查方面,无人驾驶飞行器(无人驾驶飞行器)的使用最近日益受到欢迎。装有相机的无人驾驶飞行器使得能够快速获取大量经常用于绘图、3D模型重建的图像,并作为检查员的辅助工具。由于大规模无人驾驶飞行器调查中采集的图像数量众多,合格工程师无法有效地对全部资产进行人工图像检查分析。此外,将缺陷与以往的检查进行比较,需要检索相关图像,而如果没有广泛的元数据或基于计算机的算法,这些图像往往不切实际。在本文件中,我们提出了自动结构检查损坏分析的端到端方法。使用自动物体探测和分解,我们准确地将缺陷、桥梁功用和部件本地化。接下来,鉴于无人驾驶飞行器图像高度重叠,我们提取了利益点,在整个图像数据库中发现和匹配了缺陷,大大减少了数据冗余,同时保留了缺陷的详细记录。我们的技术不仅能够对无人驾驶飞行器图像进行快速和稳健的损坏分析,我们在这里展示了这一点,而且能够有效地分析手动获得的图像。