UAV and TLS point cloud integration for the surface plant infrastructure of underground coal mines

Cuong Xuan Cao, C. Le, D. N. Vo, H. Ta, Cuong Sy Ngo, Thuan The Dang
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引用次数: 1

Abstract

The surface plant infrastructure (SPI) of underground coal mines is one of important sets of underground mines as it includes essential objects, such as office buildings, structures and equipment used to load, receive, sort or process minerals; receive and discharge waste rocks; provide ventilation for tunnels and energy for mining operations. The measurement and collection of spatial data of SPI are important to ensure the safe and effective management and operation of mining activities in underground mines. A rapid development in geospatial technologies has facilitated the acquisition of geospatial data in the mining industry. Unmanned Aerial Vehicle (UAV) photogrammetry and Terrestrial Laser Scanning (TLS) are two of the typical geospatial technologies, which have made significant contributions to the field of geospatial data collection. While UAV photogrammetry allows to create dense point clouds with centimeter - level accuracy in a short time and large areas, TLS technology can produce dense point clouds with millimeter - level accuracy. However, the latter is time - consuming and expensive while performing on a large area. The integration of UAV and TLS data can be seen as a reasonable solution to gain the advantages of both and avoid the disadvantages of each technology. This paper presents the results of an integrated study of point cloud data generated by UAV and TLS for the plant infrastructure of the underground coal mine. Featuring structures in the study area include mineshaft tower, office and factory buildings. The results show that the UAV and TLS integrated point cloud data has millimeter - level accuracy for important objects such as mineshaft towers, while ancillary structures in the study area have centimeter - level accuracy.
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煤矿井下地面厂房基础设施无人机与TLS点云集成
地下煤矿地面厂房基础设施是地下矿山的重要组成部分之一,它包括办公建筑物、用于装载、接收、分类或加工矿物的构筑物和设备;接收和排放废石;为隧道通风和采矿作业提供能源。SPI空间数据的测量和采集对于保证地下矿山开采活动的安全有效管理和运行具有重要意义。地理空间技术的迅速发展为采矿业获取地理空间数据提供了便利。无人机(UAV)摄影测量和地面激光扫描(TLS)是两种典型的地理空间技术,在地理空间数据采集领域做出了重要贡献。虽然无人机摄影测量允许在短时间和大范围内创建具有厘米级精度的密集点云,但TLS技术可以产生具有毫米级精度的密集点云。然而,后者是费时和昂贵的,而在一个大的区域执行。无人机和TLS数据的集成可以被视为一种合理的解决方案,既可以获得两者的优点,又可以避免每种技术的缺点。本文介绍了利用无人机和TLS对煤矿井下厂房基础设施产生的点云数据进行综合研究的结果。研究区域的特色建筑包括矿井塔、办公楼和厂房。结果表明,无人机与TLS集成的点云数据对矿井塔等重要目标具有毫米级精度,而研究区内的辅助结构具有厘米级精度。
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