Department of Remote Sensing, Photogrammetry and Imagery Intelligence, Institute of Geodesy, Faculty of Civil Engineering and Geodesy, Military University of Technology, 00-908 Warsaw, Poland.
Sensors (Basel). 2019 Feb 8;19(3):700. doi: 10.3390/s19030700.
Three-dimensional (3D) mapping of power lines is very important for power line inspection. Many remotely-sensed data products like light detection and ranging (LiDAR) have been already studied for power line surveys. More and more data are being obtained via photogrammetric measurements. This increases the need for the implementation of advanced processing techniques. In recent years, there have been several developments in visualisation techniques using UAV (unmanned aerial vehicle) platform photography. The most modern of such imaging systems have the ability to generate dense point clouds. However, image-based point cloud accuracy is very often various (unstable) and dependent on the radiometric quality of images and the efficiency of image processing algorithms. The main factor influencing the point cloud quality is noise. Such problems usually arise with data obtained via low-cost UAV platforms. Therefore, generated point clouds representing power lines are usually incomplete and noisy. To obtain a complete and accurate 3D model of power lines and towers, it is necessary to develop improved data processing algorithms. The experiment tested the algorithms on power lines with different voltages. This paper presents the wavelet-based method of processing data acquired with a low-cost UAV camera. The proposed, original method involves the application of algorithms for coarse filtration and precise filtering. In addition, a new way of calculating the recommended flight height was proposed. At the end, the accuracy assessment of this two-stage filtration process was examined. For this, point quality indices were proposed. The experimental results show that the proposed algorithm improves the quality of low-cost point clouds. The proposed methods improve the accuracy of determining the parameters of the lines by more than twice. About 10% of noise is reduced by using the wavelet-based approach.
三维(3D)电力线测绘对于电力线巡检非常重要。许多遥感数据产品,如激光雷达(LiDAR),已经被用于电力线调查。越来越多的数据是通过摄影测量测量获得的。这增加了对先进处理技术实施的需求。近年来,使用无人机(UAV)平台摄影的可视化技术有了一些发展。最现代的成像系统具有生成密集点云的能力。然而,基于图像的点云精度通常是不同的(不稳定的),并取决于图像的辐射质量和图像处理算法的效率。影响点云质量的主要因素是噪声。这种问题通常出现在通过低成本 UAV 平台获得的数据中。因此,代表电力线的生成点云通常是不完整和嘈杂的。为了获得电力线和塔的完整和准确的 3D 模型,有必要开发改进的数据处理算法。该实验测试了不同电压的电力线上的算法。本文提出了基于小波的低成本无人机相机采集数据处理方法。所提出的原始方法涉及应用粗滤波和精滤波算法。此外,还提出了一种新的计算推荐飞行高度的方法。最后,检查了这种两级过滤过程的精度评估。为此,提出了点质量指标。实验结果表明,所提出的算法提高了低成本点云的质量。所提出的方法将线参数的确定精度提高了两倍以上。通过使用基于小波的方法,噪声降低了约 10%。