Motion planning with motion primitives for industrial bin picking

Vojtěch Vonásek, A. Vick, M. Saska
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引用次数: 7

Abstract

In the bin picking problem, the task is to automatically unload objects from a container using a robotic manipulator. The task is often approached by organizing the objects into a predictable pattern, e.g., a workpiece carrier, in order to simplify all integral subtasks like object recognition, motion planning and grasping. In such a case, motion planning can even be solved offline as it is ensured that the objects are always at the same positions at known times. However, there is a growing demand for non-structured bin picking, where the objects can be placed randomly in the bins. This arises from recent trends of transforming classical factories into smart production facilities allowing small lot sizes at the efficiency of mass production. The demand for fast and highly flexible handling and manipulation abilities of industrial robots requires to solve all the bin picking methods, including motion planning, online. In this paper, we propose a novel technique for fast sampling-based motion planning of robotic manipulators using motion primitives. Motion primitives are short trajectories that boost search of the configuration space and consequently speed up the planning phase. The proposed work has been verified in a simulation and on a prototype of a bin picking system.
运动规划与运动原语工业料仓拣选
在拣箱问题中,任务是使用机器人机械手自动从容器中卸下物品。该任务通常通过将对象组织成可预测的模式(例如,工件载体)来实现,以便简化所有完整的子任务,如对象识别,运动规划和抓取。在这种情况下,运动规划甚至可以离线解决,因为它确保了物体在已知时间始终处于相同的位置。然而,对于非结构化的垃圾箱拾取的需求越来越大,在这种情况下,物品可以随机放置在垃圾箱中。这源于最近将传统工厂转变为智能生产设施的趋势,允许以大规模生产的效率进行小批量生产。工业机器人对快速和高度灵活的搬运和操作能力的需求要求解决所有的拣仓方法,包括运动规划,在线。本文提出了一种基于运动原语的基于采样的机器人快速运动规划方法。运动原语是短轨迹,促进了构型空间的搜索,从而加快了规划阶段。所提出的工作已在一个模拟和一个垃圾箱拾取系统的原型上得到验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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