Huang Wei, Jiang San, Jiang Wanshou
State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, 129 Luoyu Road, Wuhan 430079, China.
School of Compute Science, China University of Geosciences, Wuhan 430074, China.
Sensors (Basel). 2020 Feb 4;20(3):824. doi: 10.3390/s20030824.
Pylons play an important role in the safe operation of power transmission grids. Directly reconstructing pylons from UAV images is still a great challenge due to problems of weak texture, hollow-carved structure, and self-occlusion. This paper presents an automatic model-driven method for pylon reconstruction from oblique UAV images. The pylons are reconstructed with the aid of the 3D parametric model library, which is represented by connected key points based on symmetry and coplanarity. First, an efficient pylon detection method is applied to detect the pylons in the proposed region, which are obtained by clustering the line segment intersection points. Second, the pylon model library is designed to assist in pylon reconstruction. In the predefined pylon model library, a pylon is divided into two parts: pylon body and pylon head. Before pylon reconstruction, the pylon type is identified by the inner distance shape context (IDSC) algorithm, which matches the shape contours of pylon extracted from UAV images and the projected pylon model. With the a priori shape and coplanar constraint, the line segments on pylon body are matched and the pylon body is modeled by fitting four principle legs and four side planes. Then a Markov Chain Monte Carlo (MCMC) sampler is used to estimate the parameters of the pylon head by computing the maximum probability between the projected model and the extracted line segments in images. Experimental results on several UAV image datasets show that the proposed method is a feasible way of automatically reconstructing the pylon.
杆塔在输电电网的安全运行中起着重要作用。由于纹理薄弱、镂空结构和自遮挡等问题,直接从无人机图像重建杆塔仍然是一个巨大的挑战。本文提出了一种基于倾斜无人机图像的杆塔自动模型驱动重建方法。借助三维参数模型库对杆塔进行重建,该模型库由基于对称性和共面性的连接关键点表示。首先,应用一种高效的杆塔检测方法在所提出的区域中检测杆塔,该区域是通过对线段交点进行聚类获得的。其次,设计杆塔模型库以辅助杆塔重建。在预定义的杆塔模型库中,将杆塔分为两部分:杆塔主体和杆塔头部。在杆塔重建之前,通过内部距离形状上下文(IDSC)算法识别杆塔类型,该算法将从无人机图像中提取的杆塔形状轮廓与投影的杆塔模型进行匹配。利用先验形状和共面约束,对杆塔主体上的线段进行匹配,并通过拟合四条主腿和四个侧面来对杆塔主体进行建模。然后使用马尔可夫链蒙特卡罗(MCMC)采样器通过计算投影模型与图像中提取的线段之间的最大概率来估计杆塔头部的参数。在多个无人机图像数据集上的实验结果表明,该方法是自动重建杆塔的一种可行方法。