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Learned parametrized dynamic movement primitives with shared synergies for controlling robotic and musculoskeletal systems

机译:具有共享协同作用的学习型参数化动态运动图元用于控制机器人和肌肉骨骼系统

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摘要

A salient feature of human motor skill learning is the ability to exploit similarities across related tasks. In biological motor control, it has been hypothesized that muscle synergies, coherent activations of groups of muscles, allow for exploiting shared knowledge. Recent studies have shown that a rich set of complex motor skills can be generated by a combination of a small number of muscle synergies. In robotics, dynamic movement primitives are commonly used for motor skill learning. This machine learning approach implements a stable attractor system that facilitates learning and it can be used in high-dimensional continuous spaces. However, it does not allow for reusing shared knowledge, i.e., for each task an individual set of parameters has to be learned. We propose a novel movement primitive representation that employs parametrized basis functions, which combines the benefits of muscle synergies and dynamic movement primitives. For each task a superposition of synergies modulates a stable attractor system. This approach leads to a compact representation of multiple motor skills and at the same time enables efficient learning in high-dimensional continuous systems. The movement representation supports discrete and rhythmic movements and in particular includes the dynamic movement primitive approach as a special case. We demonstrate the feasibility of the movement representation in three multi-task learning simulated scenarios. First, the characteristics of the proposed representation are illustrated in a point-mass task. Second, in complex humanoid walking experiments, multiple walking patterns with different step heights are learned robustly and efficiently. Finally, in a multi-directional reaching task simulated with a musculoskeletal model of the human arm, we show how the proposed movement primitives can be used to learn appropriate muscle excitation patterns and to generalize effectively to new reaching skills.
机译:人类运动技能学习的一个显着特征是能够利用相关任务之间的相似性。在生物运动控制中,已经假设肌肉协同作用,肌肉群的一致激活可以利用共享的知识。最近的研究表明,少量肌肉协同作用可以产生丰富的复杂运动技能。在机器人技术中,动态运动原语通常用于运动技能学习。这种机器学习方法实现了稳定的吸引器系统,该系统有助于学习,并且可以在高维连续空间中使用。但是,它不允许重复使用共享的知识,即,对于每个任务,必须学习一组单独的参数。我们提出了一种新颖的运动基元表示形式,它采用了参数化的基函数,结合了肌肉协同作用和动态运动基元的优点。对于每个任务,协同作用的叠加可调节稳定的吸引器系统。这种方法可以紧凑地表示多种运动技能,同时可以在高维连续系统中进行高效学习。运动表示支持离散运动和有节奏的运动,特别是包括动态运动原始方法。我们演示了在三个多任务学习模拟方案中运动表示的可行性。首先,在点质量任务中说明了建议表示的特征。其次,在复杂的类人动物步行实验中,稳健而有效地学习了具有不同步高的多个步行模式。最后,在以人手臂的肌肉骨骼模型模拟的多向到达任务中,我们展示了如何使用提出的运动原语来学习适当的肌肉激励模式并有效地推广到新的到达技巧。

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