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Skill Memories for Parameterized Dynamic Action Primitives on the Pneumatically Driven Humanoid Robot Child Affetto

机译:气动人形机器人儿童Affetto上参数化动态动作基元的技能记忆

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In this work, we propose an extension of parameterized skills to achieve generalization of forward control signals for action primitives that result in an enhanced control quality of complex robotic systems. We argue to shift the complexity of learning the full dynamics of the robot to a lower dimensional task related learning problem. Due to generalization over task variability, online learning for complex robots as well as complex scenarios becomes feasible. We perform an experimental evaluation of the generalization capabilities of the proposed online learning system through simulation of a compliant 2DOF arm. Scalability to a complex robotic system is demonstrated on the pneumatically driven humanoid robot Affetto including 6DOF.
机译:在这项工作中,我们提出了一种扩展参数化技能的方法,以实现动作原语的前向控制信号的泛化,从而提高复杂机器人系统的控制质量。我们认为将学习机器人的全部动力学的复杂性转移到与低维任务相关的学习问题上。由于任务可变性的普遍化,针对复杂机器人以及复杂场景的在线学习变得可行。我们通过对兼容的2DOF臂进行仿真,对所提出的在线学习系统的泛化能力进行了实验评估。包括6DOF的气动人形机器人Affetto展示了对复杂机器人系统的可扩展性。

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