Multi-step forceful manipulation tasks, such as opening a push-and-twist childproof bottle, require a robot to make various planning choices that are substantially impacted by the requirement to exert force during the task. The robot must reason over discrete and continuous choices relating to the sequence of actions, such as whether to pick up an object, and the parameters of each of those actions, such how to grasp the object. To enable planning and executing forceful manipulation, we augment an existing task and motion planner with constraints that explicitly consider torque and frictional limits, captured through the proposed forceful kinematic chain constraint. In three domains, opening a childproof bottle, twisting a nut and cutting a vegetable, we demonstrate how the system selects from among a combinatorial set of strategies.We also show how cost-sensitive planning can be used to find strategies and parameters that are robust to uncertainty in the physical parameters.
翻译:多步骤的操纵任务,例如打开一个按键和潮湿的防止儿童接触的瓶子,要求机器人做出各种规划选择,这些选择受到任务期间使用武力的要求的重大影响。机器人必须超越与行动顺序有关的离散和连续的选择,例如是否拾取物体,以及这些行动的参数,例如如何捕捉物体。为了能够进行规划和实施强力操纵,我们增加了现有的任务和运动规划员,其限制明确考虑到通过拟议的强力运动链限制而获得的错误和摩擦限制。在三个领域,我们展示了系统如何从一组组合战略中选择,例如是否采集物体,以及这些行动的参数,例如如何捕捉物体。我们还展示了如何利用成本敏感的规划来找到战略和参数,这些战略和参数对于物理参数的不确定性是可靠的。