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A Framework for Modelling Local Human-Robot Interactions Based on Unsupervised Learning

机译:基于无监督学习的地方人体机器人交互建模框架

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This paper addresses the problem of teaching a robot interaction behaviors using the imitation learning paradigm. Particularly, the approach makes use of Gaussian Mixture Models (GMMs) to model the physical interaction of the robot and the person when the robot is teleoperated or guided by an expert. The learned models are integrated into a sample-based planner, an RRT~*, at two levels: as a cost function in order to plan trajectories considering behavior constraints, and as configuration space sampling bias to discard samples with low cost according to the behaviors. The algorithm is successfully tested in the laboratory using an actual robot and real trajectories examples provided by an expert.
机译:本文解决了使用模仿学习范式教授机器人交互行为的问题。特别是,该方法利用高斯混合模型(GMM)来模拟机器人的物理交互和机器人远方或由专家指导。学习的模型被集成到基于样本的策划器,一个rrt〜*,两个级别:作为成本函数,以计划考虑行为约束的轨迹,以及根据行为的配置空间采样偏置,以丢弃低成本的样本。该算法在实验室中成功地测试了专家提供的实际机器人和实际轨迹示例。

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