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A multiple internal model approach to movement planning

机译:行动计划的多种内部模型方法

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摘要

Under the hypothesis that any human motion could be decomposed into dynamic movement primitives (DMPs), sets of second order differential equations are used as the internal model (IM) to describe primitive movements. The spacial and temporal scalabilities of the internal model could be used to simplify the learning process. In this paper, we present an approach to movement learning based on internal models. By making use of the linear properties of internal models, we first investigate the possibility of generating similar movement patterns directly via the same internal model with the minimum changes in the internal model parameters, and avoid the reinforcement learning. Next, we consider more complex movements for which different internal models are needed. Based on the task decomposition, all movements can be classified into the sequential and parallel DMPs. The former requires a number of IMs to work sequentially so that a complicated movement can be performed. The latter also requires a number IMs to work in parallel to generate the needed movement. To mimic the human limb behavior, we use a two-link robot arm as the prototype to perform the movement in the process of letter writing.
机译:在任何人类运动都可以分解为动态运动原语(DMP)的假设下,将二阶微分方程组用作描述原始运动的内部模型(IM)。内部模型的空间和时间可扩展性可用于简化学习过程。在本文中,我们提出了一种基于内部模型的运动学习方法。通过利用内部模型的线性特性,我们首先研究通过内部模型参数的最小变化直接通过相同内部模型直接生成相似运动模式的可能性,并避免进行强化学习。接下来,我们考虑需要不同内部模型的更复杂的运动。基于任务分解,所有运动都可以分为顺序DMP和并行DMP。前者需要多个IM才能顺序工作,以便可以执行复杂的运动。后者还需要多个IM并行工作以生成所需的运动。为了模仿人的肢体行为,我们使用双链接机械臂作​​为原型,在写信过程中执行运动。

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