Unmanned Aerial Vehicle (UAV) based remote sensing system incorporated with computer vision has demonstrated potential for assisting building construction and in disaster management like damage assessment during earthquakes. The vulnerability of a building to earthquake can be assessed through inspection that takes into account the expected damage progression of the associated component and the component's contribution to structural system performance. Most of these inspections are done manually, leading to high utilization of manpower, time, and cost. This paper proposes a methodology to automate these inspections through UAV-based image data collection and a software library for post-processing that helps in estimating the seismic structural parameters. The key parameters considered here are the distances between adjacent buildings, building plan-shape, building plan area, objects on the rooftop and rooftop layout. The accuracy of the proposed methodology in estimating the above-mentioned parameters is verified through field measurements taken using a distance measuring sensor and also from the data obtained through Google Earth. Additional details and code can be accessed from https://uvrsabi.github.io/ .
翻译:与计算机视觉结合的无人驾驶航空飞行器(无人驾驶飞行器)遥感系统表明,在地震期间协助建筑建设和灾害管理方面,如损害评估等,有潜力帮助进行建筑建设和灾难管理,可通过检查评估建筑物易受地震影响的程度,检查时应考虑到相关部分的预期损害进展以及部分对结构系统性能的贡献,这些检查大多是手工进行的,导致人力、时间和费用利用率高。本文件建议采用一种方法,通过基于无人驾驶飞行器的图像数据收集和有助于估计地震结构参数的后处理软件库使这些检查自动化。这里考虑的关键参数是附近建筑物之间的距离、建筑图象、建筑计划区、屋顶和屋顶布局上的物体。估计上述参数的拟议方法的准确性,通过使用远程测量传感器和通过谷歌地球获得的数据进行实地测量,通过实地测量加以核实。可从https://uvrsabi.github.io/获得更多细节和代码。