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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Towards Robust Skill Generalization: Unifying Learning from Demonstration and Motion Planning
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Towards Robust Skill Generalization: Unifying Learning from Demonstration and Motion Planning

机译:促进强大的技能概括:从演示和运动规划统一学习

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In this paper, we present Combined Learning from demonstration And Motion Planning (CLAMP) as an efficient approach to skill learning and generalizable skill reproduction. CLAMP combines the strengths of Learning from Demonstration (LfD) and motion planning into a unifying framework. We carry out probabilistic inference to find trajectories which are optimal with respect to a given skill and also feasible in different scenarios. We use factor graph optimization to speed up inference. To encode optimality, we provide a new probabilistic skill model based on a stochastic dynamical system. This skill model requires minimal parameter tuning to learn, is suitable to encode skill constraints, and allows efficient inference. Preliminary experimental results showing skill generalization over initial robot state and unforeseen obstacles are presented.
机译:在本文中,我们将演示和运动规划(CLAMP)的组合学习作为技能学习和概括技能繁殖的有效方法。夹具将学习的优点与演示(LFD)和运动计划相结合到统一框架中。我们开展概率推理,找到关于给定技能最佳的轨迹,也可以在不同场景中可行。我们使用因子图优化来加速推断。为了编码最优性,我们提供基于随机动力系统的新的概率技能模型。该技能模型需要最小的参数调整来学习,适合编码技能约束,并允许有效推断。提出了初步实验结果,显示了初始机器人状态和不可预见的障碍物上的技能概括。

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