Scan data of urban environments often include representations of dynamic objects, such as vehicles, pedestrians, and so forth. However, when it comes to constructing a 3D point cloud map with sequential accumulations of the scan data, the dynamic objects often leave unwanted traces in the map. These traces of dynamic objects act as obstacles and thus impede mobile vehicles from achieving good localization and navigation performances. To tackle the problem, this paper presents a novel static map building method called ERASOR, Egocentric RAtio of pSeudo Occupancy-based dynamic object Removal, which is fast and robust to motion ambiguity. Our approach directs its attention to the nature of most dynamic objects in urban environments being inevitably in contact with the ground. Accordingly, we propose the novel concept called pseudo occupancy to express the occupancy of unit space and then discriminate spaces of varying occupancy. Finally, Region-wise Ground Plane Fitting (R-GPF) is adopted to distinguish static points from dynamic points within the candidate bins that potentially contain dynamic points. As experimentally verified on SemanticKITTI, our proposed method yields promising performance against state-of-the-art methods overcoming the limitations of existing ray tracing-based and visibility-based methods.
翻译:城市环境的扫描数据往往包括车辆、行人等动态物体的表示。然而,在建造三维点云图时,随着扫描数据的相继积累,动态物体往往在地图中留下不必要的痕迹。这些动态物体的痕迹作为障碍,从而妨碍机动车辆实现良好的定位和导航性能。为了解决这一问题,本文件介绍了一种新型静态地图建设方法,名为ERASOR,PSeudo Occupany基动态物体清除的Egocentic RAtio,该方法快速而有力,可以移动模糊。我们的方法引导它注意城市环境中大多数动态物体的性质,这些物体不可避免地与地面接触。因此,我们提出了称为假占用的新概念,以表达单位空间的占用情况,然后区分不同占用空间。最后,采用区域明智的地面平板(R-GPFPF)来区分可能包含动态点的候选宝箱内动态点和动态点。在SemanticITTI上进行实验性核查后,我们的拟议方法产生了有希望的性表现,与基于现有光线的可视度方法的局限性。