The deployment of robots within realistic environments requires the capability to plan and refine the loco-manipulation trajectories on the fly to avoid unexpected interactions with a dynamic environment. This extended abstract provides a pipeline to offline plan a configuration space global trajectory based on a randomized strategy, and to online locally refine it depending on any change of the dynamic environment and the robot state. The offline planner directly plans in the contact space, and additionally seeks for whole-body feasible configurations compliant with the sampled contact states. The planned trajectory, made by a discrete set of contacts and configurations, can be seen as a graph and it can be online refined during the execution of the global trajectory. The online refinement is carried out by a graph optimization planner exploiting visual information. It locally acts on the global initial plan to account for possible changes in the environment. While the offline planner is a concluded work, tested on the humanoid COMAN+, the online local planner is still a work-in-progress which has been tested on a reduced model of the CENTAURO robot to avoid dynamic and static obstacles interfering with a wheeled motion task. Both the COMAN+ and the CENTAURO robots have been designed at the Italian Institute of Technology (IIT).
翻译:在现实环境中部署机器人需要有能力规划和改进飞行轨道,以避免与动态环境发生意想不到的相互作用。 这个扩展的抽象性提供了一条管道,用于离线计划一个基于随机战略的配置空间全球轨迹,并根据动态环境和机器人状态的任何变化在本地在线上加以改进。离线规划器直接在接触空间进行直接规划,并额外寻找符合抽样接触状态的全机可行的配置。计划轨迹,由一组独立的接触和配置构成,可被视为一张图表,在全球轨迹执行期间可在线加以改进。在线改进由利用视觉信息的图形优化规划仪进行。全球初始计划根据环境可能的变化进行局部调整。离线规划器是已经完成的工作,在人类机COMAN+上进行了测试,而在线本地规划仪仍然是工作进展中的一项工作,已经用一个简化的CENTARO机器人模型进行了测试,以避免动态和静态障碍干扰。意大利技术公司和CENTIA研究所设计了该技术公司和CRETIA的研发任务。