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An evaluation of image-based structural health monitoring using integrated unmanned aerial vehicle platform

机译:使用集成式无人机平台的基于图像的结构健康监测评估

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摘要

Increasing number of skyscrapers along with the large number of tall bridges in the urban setting throughout the world also increases the demand of robust and autonomously controlled structural health monitoring (SHM) in order to enhance the reliability of such structures and their surroundings. In this paper, an unmanned aerial vehicle (UAV)-based autonomous SHM system has been investigated, in which the images of the structural site captured by the UAV were stitched together to form the complete view of the structure. The image-stitching task has been done by using a well-known speeded up robust features (SURF)-based feature detection algorithm. The large number of features resulting from SURF are first reduced with random sample consensus algorithm and then the respective transformations are applied to align the images for final stitching. The comparison between the current and previous view of the structural site provides the structural differences. The proposed approach is tested on a sample structure in a lab with different possible realistic types of defects that are induced in the structure, and the performance of the proposed methodology is compared with the existing approaches. It has been shown that the proposed system can perform image stitching even if the UAV suffers angular displacement due to wind thrusts or calibration issues. The proposed approach has also been applied on a concrete structure, and the displacement detected on the column of the structure's backyard verified the feasibility for real-world SHM.
机译:全世界越来越多的摩天大楼以及城市中大量的高架桥也增加了对健壮和自主控制的结构健康监测(SHM)的需求,以提高此类结构及其周围环境的可靠性。本文研究了一种基于无人机的自主SHM系统,其中将无人机捕获的结构部位的图像缝合在一起以形成结构的完整视图。图像拼接任务是通过使用众所周知的基于加速健壮特征(SURF)的特征检测算法完成的。首先使用随机样本共识算法减少SURF产生的大量特征,然后应用相应的变换来对齐图像以进行最终拼接。当前和以前的结构位置视图之间的比较提供了结构差异。所提出的方法在实验室中的样本结构上进行了测试,该结构具有在结构中诱发的不同可能的实际缺陷类型,并将所提出的方法的性能与现有方法进行了比较。已经显示出,即使UAV由于风推力或校准问题而遭受角位移,所提出的系统也可以执行图像拼接。所提议的方法也已应用于混凝土结构,并且在结构后院的柱子上检测到的位移证明了实际SHM的可行性。

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