The paper proposes a reliable and robust planning solution to the long range robotic navigation problem in extremely cluttered environments. A two-layer planning architecture is proposed that leverages both the environment map and the direct depth sensor information to ensure maximal information gain out of the onboard sensors. A frontier-based pose sampling technique is used with a fast marching cost-to-go calculation to select a goal pose and plan a path to maximize robot exploration rate. An artificial potential function approach, relying on direct depth measurements, enables the robot to follow the path while simultaneously avoiding small scene obstacles that are not captured in the map due to mapping and localization uncertainties. We demonstrate the feasibility and robustness of the proposed approach through field deployments in a structurally complex warehouse using a micro-aerial vehicle (MAV) with all the sensing and computations performed onboard.
翻译:该文件提出了在极端混乱的环境中远距离机器人导航问题的可靠和有力的规划解决办法。提议建立一个两层规划架构,利用环境地图和直接深度传感器信息,确保从机载传感器获取尽可能多的信息。使用基于边界的取样技术,快速进行成本到成本计算,以选择一个目标,并规划一条最大限度地提高机器人探测率的道路。依靠直接深度测量的人工潜在功能方法,使机器人能够走这条道路,同时避免地图中由于绘图和本地化不确定因素而没有捕捉到的小场景障碍。我们通过在结构复杂的仓库使用微型飞行器(MAV)和机载所有测和计算方法进行实地部署,来证明拟议方法的可行性和稳健性。