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Prediction of Intention during Interaction with iCub with Probabilistic Movement Primitives

机译:用概率运动原语预测与iCub交互期间的意图

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This paper describes our open-source software for predicting the intention of a user physically interacting with the humanoid robot iCub. Our goal is to allow the robot to infer the intention of the human partner during collaboration, by predicting the future intended trajectory: this capability is critical to design anticipatory behaviors that are crucial in human-robot collaborative scenarios, such as in co-manipulation, cooperative assembly or transportation. We propose an approach to endow the iCub with basic capabilities of intention recognition, based on Probabilistic Movement Primitives (ProMPs), a versatile method for representing, generalizing, and reproducing complex motor skills. The robot learns a set of motion primitives from several demonstrations, provided by the human via physical interaction. During training, we model the collaborative scenario using human demonstrations. During the reproduction of the collaborative task, we use the acquired knowledge to recognize the intention of the human partner. Using a few early observations of the state of the robot, we can not only infer the intention of the partner, but also complete the movement, even if the user breaks the physical interaction with the robot. We evaluate our approach in simulation and on the real iCub. In simulation, the iCub is driven by the user using the Geomagic Touch haptic device. In the real robot experiment, we directly interact with the iCub by grabbing and manually guiding the robot's arm. We realize two experiments on the real robot: one with simple reaching trajectories, and one inspired by collaborative object sorting. The software implementing our approach is open-source and available on the GitHub platform. Additionally, we provide tutorials and videos.
机译:本文介绍了我们的开源软件,用于预测用户与人形机器人iCub进行物理交互的意图。我们的目标是通过预测未来的预期轨迹,使机器人在协作过程中推断出人类伙伴的意图:此功能对于设计在人机协作场景(如协同操作)中至关重要的预期行为至关重要合作组装或运输。我们基于概率运动原语(ProMP),提出一种使iCub具有意图识别基本功能的方法,概率原语是表示,概括和再现复杂运动技能的一种通用方法。机器人从人类通过物理交互提供的一些演示中学习了一组运动原语。在培训期间,我们使用人类演示对协作方案进行建模。在复制协作任务期间,我们使用获得的知识来认识人类伙伴的意图。使用对机器人状态的一些早期观察,即使用户中断了与机器人的物理交互,我们不仅可以推断伙伴的意图,而且可以完成动作。我们在仿真和真实iCub上评估我们的方法。在仿真中,iCub由用户使用Geomagic Touch触觉设备驱动。在实际的机器人实验中,我们通过抓住并手动引导机器人的手臂直接与iCub进行交互。我们在真实的机器人上完成了两项实验:一项具有简单的到达轨迹,另一项受到协作对象分类的启发。实现我们方法的软件是开源的,可以在GitHub平台上使用。此外,我们提供了教程和视频。

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