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Identifying good poses when doing your household chores: Creation and exploitation of inverse surface reachability maps

机译:在做家务时识别好姿势:反面可达性图的创建和利用

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In current approaches to combined task and motion planning, usually symbolic planning and sampling based motion-planning are integrated. One problem is here to come up with good samples. We address the problem of identifying useful poses for a robot close to working surfaces such as tables or shelves. Our approach is based on reachability inversion which answers the question: where should the robot be located in order to reach a certain object? We extend the concept from point-based objects to flat polygonal surfaces in order to enable the robot to have a a good grasping position for many objects. Our approach allows to quickly sample multiple distinct poses for the robot from an prior computed distribution. Further we show how sampling from an inverse reachability distribution can be integrated into a CTAMP system.
机译:在当前的组合任务和运动计划的方法中,通常将基于符号计划和基于采样的运动计划进行集成。这里的一个问题是要拿出好的样本。我们解决了为靠近工作台(例如桌子或架子)的机器人识别有用姿势的问题。我们的方法基于可达性倒置,它回答了以下问题:机器人应该位于何处才能到达某个物体?我们将概念从基于点的对象扩展到平坦的多边形表面,以使机器人能够很好地抓握许多对象。我们的方法允许从先前计算的分布中为机器人快速采样多个不同的姿势。进一步,我们展示了如何将逆可达性分布中的采样集成到CTAMP系统中。

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