基于 "云控制 "摄影测量更新天然气管道周围的正射影像图

Lei Qin, Yawen Liu, Xinbo Zhao, Yansong Duan
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摘要

摘要天然气作为一种清洁能源被广泛使用,主要通过长输管道运输。天然气长输管道的定期维护和检查是一项重要任务。由于这些管道覆盖面广、距离远,工作量巨大。首先需要确定变化区域,这可以使用无人机(UAV)拍摄的多套正射影像图来完成。然而,无人机图像的足迹较小,几何失真严重,需要大量的地面控制点(GCP)来进行精确定位。实地测量这些点既具有挑战性又耗费时间,成为限制正射影像图快速制作的关键因素。为了克服这一挑战,本文介绍了 "云控制 "摄影测量技术,以实现长输管道周围正射影像的全自动更新,为这些天然气管道的维护和检查提供基础数据。这种方法用包含已知方位参数的图像取代 GCP,作为控制信息。通过匹配新旧图像之间的连接点,将 "云控制点 "转移到新图像上,从而实现图像注册并制作正射影像图。在云南省天然气长输管道富民段和昭通段进行的实验表明,对于地面分辨率为 0.05 米的无人机图像,使用 "云控制 "方法可实现 0.05 米的平面精度和 0.07 米的高程精度。这些结果与使用全球定位系统(GCP)确定方向所获得的精度相当。
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Updating Orthophotos around Gas Pipelines based on "Cloud Control" Photogrammetry
Abstract. As a clean energy source, natural gas is widely used and primarily transported through long-distance pipelines. Regular maintenance and inspection of long-distance gas pipelines are crucial tasks. Due to the extensive coverage and distance of these pipelines, the workload is enormous. It is necessary to first identify areas of change, which can be carried out using multiple sets of orthophotos produced by unmanned aerial vehicles (UAVs). However, UAV images have small footprints and significant geometric distortions, requiring a large number of ground control points (GCPs) for accurate positioning. Measuring these points in the field is challenging and time-consuming, becoming a key factor limiting the rapid production of orthophotos. To overcome this challenge, this paper introduces the "cloud control" photogrammetry technology to achieve fully automatic updates of orthophotos around long-distance pipelines, providing foundational data for the maintenance and inspection of these gas pipelines. This method replaces GCPs with images containing known orientation parameters, serving as control information. By matching tie points between new and old images, the "cloud control points" are transferred to the new images, enabling the image registration and production of orthophotos. The experiments conducted on the Fumin and Zhaotong segments of a long-distance gas pipeline in Yunnan Province demonstrate that, for UAV images with a ground resolution of 0.05 meters, using the "cloud control" method achieves a planar accuracy of 0.05 meters and an elevation accuracy of 0.07 meters. These results are comparable to the accuracy obtained by orienting the results using GCPs.
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