This work proposes a robot task planning framework for retrieving a target object in a confined workspace among multiple stacked objects that obstruct the target. The robot can use prehensile picking and in-workspace placing actions. The method assumes access to 3D models for the visible objects in the scene. The key contribution is in achieving desirable properties, i.e., to provide (a) safety, by avoiding collisions with sensed obstacles, objects, and occluded regions, and (b) resolution completeness (RC) - or probabilistic completeness (PC) depending on implementation - which indicates a solution will be eventually found (if it exists) as the resolution of algorithmic parameters increases. A heuristic variant of the basic RC algorithm is also proposed to solve the task more efficiently while retaining the desirable properties. Simulation results compare using random picking and placing operations against the basic RC algorithm that reasons about object dependency as well as its heuristic variant. The success rate is higher for the RC approaches given the same amount of time. The heuristic variant is able to solve the problem even more efficiently than the basic approach. The integration of the RC algorithm with perception, where an RGB-D sensor detects the objects as they are being moved, enables real robot demonstrations of safely retrieving target objects from a cluttered shelf.
翻译:本文提出了一个机器人任务规划框架,用于在多个堆叠的物体中阻挡目标的情况下,在受限的工作空间中检索目标物体。机器人可以使用抓取和放置操作。该方法假定可以访问场景中可见物体的3D模型。本研究的主要贡献在于实现了理想的属性,即(a)通过避免与感测到的障碍物、物体和遮挡区域发生碰撞来提供安全,以及(b)分辨率完整性(RC)-或根据实现方式的概率完整性(PC) - 表示随着算法参数的分辨率增加,如果存在,将最终找到解决方案。还提出了基本RC算法的启发式变体来更有效地解决任务,同时保留理想的属性。仿真结果将随机拾取和放置操作与基本RC算法进行比较,后者能够考虑物体依赖性以及其启发式变体。RC方法的成功率比相同时间内使用随机操作的成功率更高。启发式变体可以比基本方法更有效地解决问题。将RC算法与感知相结合,其中RGB-D传感器在将物体移动时检测物体,从而实现了从杂乱架子中安全检索目标物体的实际机器人演示。