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Extracting low-dimensional control variables for movement primitives

机译:提取运动原语的低维控制变量

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Movement primitives (MPs) provide a powerful framework for data driven movement generation that has been successfully applied for learning from demonstrations and robot reinforcement learning. In robotics we often want to solve a multitude of different, but related tasks. As the parameters of the primitives are typically high dimensional, a common practice for the generalization of movement primitives to new tasks is to adapt only a small set of control variables, also called meta parameters, of the primitive. Yet, for most MP representations, the encoding of these control variables is pre-coded in the representation and can not be adapted to the considered tasks. In this paper, we want to learn the encoding of task-specific control variables also from data instead of relying on fixed meta-parameter representations. We use hierarchical Bayesian models (HBMs) to estimate a low dimensional latent variable model for probabilistic movement primitives (ProMPs), which is a recent movement primitive representation. We show on two real robot datasets that ProMPs based on HBMs outperform standard ProMPs in terms of generalization and learning from a small amount of data and also allows for an intuitive analysis of the movement. We also extend our HBM by a mixture model, such that we can model different movement types in the same dataset.
机译:运动原语(MP)为数据驱动的运动生成提供了强大的框架,该框架已成功应用于演示和机器人强化学习中。在机器人技术中,我们经常要解决许多不同但相关的任务。由于基本体的参数通常是高维的,因此将运动基本体推广到新任务的通常做法是仅适应基本体的一小套控制变量,也称为元参数。但是,对于大多数MP表示形式,这些控制变量的编码已在表示形式中进行了预编码,无法适应所考虑的任务。在本文中,我们希望从数据中学习特定于任务的控制变量的编码,而不是依赖于固定的元参数表示形式。我们使用分层贝叶斯模型(HBM)来估计概率运动原语(ProMP)的低维潜在变量模型,这是最近的运动原语表示。我们在两个真实的机器人数据集上显示,基于HBM的ProMP在泛化和从少量数据中学习方面优于标准ProMP,并且还可以直观地分析运动。我们还通过混合模型扩展了HBM,以便可以在同一数据集中对不同的运动类型进行建模。

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