The ability to process environment maps across multiple sessions is critical for robots operating over extended periods of time. Specifically, it is desirable for autonomous agents to detect changes amongst maps of different sessions so as to gain a conflict-free understanding of the current environment. In this paper, we look into the problem of change detection based on a novel map representation, dubbed Plane Signed Distance Fields (PlaneSDF), where dense maps are represented as a collection of planes and their associated geometric components in SDF volumes. Given point clouds of the source and target scenes, we propose a three-step PlaneSDF-based change detection approach: (1) PlaneSDF volumes are instantiated within each scene and registered across scenes using plane poses; 2D height maps and object maps are extracted per volume via height projection and connected component analysis. (2) Height maps are compared and intersected with the object map to produce a 2D change location mask for changed object candidates in the source scene. (3) 3D geometric validation is performed using SDF-derived features per object candidate for change mask refinement. We evaluate our approach on both synthetic and real-world datasets and demonstrate its effectiveness via the task of changed object detection. Supplementary video: https://youtu.be/oh-MQPWTwZI
翻译:多次处理环境地图的能力对于长期运行的机器人来说至关重要。 具体地说, 自主代理机构最好能够探测不同会话地图之间的变化, 以便获得对当前环境的无冲突理解。 在本文中, 我们根据新颖的地图代表( 被称为Planbede Plande Control Fields (PlaneSDF) ) 来研究变化探测问题, 在这种代表处, 密集的地图代表着飞机及其在 SDF 卷中的相关几何组成部分的集合。 鉴于源和目标场景的点云, 我们提议一种基于PlaneSDF 的三步式变化探测方法:(1) 平流SDF 数量在每场中即刻并用平面配置进行记录; 2D 高度地图和对象地图通过高度投影和相连接的部件分析, 逐卷地绘制。 (2) 将高度地图与天体图进行比较和交叉,以便为源场中已变化的物体候选人制作2DFD- 位置校验。 (3) 3D 以每个对象选择的SDF- broad 特征进行校正。 我们评估了合成和真实世界数据系统/ 测试 。