Conventional sensor-based localization relies on high-precision maps, which are generally built using specialized mapping techniques involving high labor and computational costs. In the architectural, engineering and construction industry, Building Information Models (BIM) are available and can provide informative descriptions of environments. This paper explores an effective way to localize a mobile 3D LiDAR sensor on BIM-generated maps considering both geometric and semantic properties. First, original BIM elements are converted to semantically augmented point cloud maps using categories and locations. After that, a coarse-to-fine semantic localization is performed to align laser points to the map based on iterative closest point registration. The experimental results show that the semantic localization can track the pose successfully with only one LiDAR sensor, thus demonstrating the feasibility of the proposed mapping-free localization framework. The results also show that using semantic information can help reduce localization errors on BIM-generated maps.
翻译:以常规传感器为基础的本地化依赖于高精度地图,这些地图通常是使用涉及高人工和计算成本的专门绘图技术建造的。在建筑、工程和建筑工业中,建筑信息模型(BIM)可用,可以提供环境信息描述。本文探讨了将移动的3D LiDAR传感器定位在BIM产生的地图上的有效方法,考虑到几何和语义特性。首先,原始的BIM元素被转换为使用类别和位置进行语义增强的点云图。此后,将进行粗微到纤维的语义本地化,使激光点与基于迭接点注册的地图相匹配。实验结果显示,语义本地化只能用一个LIDAR传感器成功地跟踪外观,从而证明拟议的无绘图本地化框架的可行性。结果还表明,使用语义信息可以帮助减少BIM生成的地图上的本地化错误。