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Learning Compositional Hierarchies of a Sensorimotor System

机译:学习感觉运动系统的组成层次

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We address the problem of learning static spatial representation of a robot motor system and the environment to solve a general forward/inverse kinematics problem. The latter proves complex for high degree-of-freedom systems. The proposed architecture relates to a recent research in cognitive science, which provides a solid evidence that perception and action share common neural architectures. We propose to model both a motor system and an environment with compositional hierarchies and develop an algorithm for learning them together with a mapping between the two. We show that such a representation enables efficient learning and inference of robot states. We present our experiments in a simulated environment and with a humanoid robot Nao.
机译:我们解决了学习机器人电机系统和环境的静态空间表示的问题,以解决一般的正向/反向运动学问题。对于高自由度系统,后者证明是复杂的。拟议的架构与认知科学领域的最新研究有关,该研究提供了坚实的证据,表明感知和行动共享共同的神经架构。我们建议对具有组成层次结构的电机系统和环境进行建模,并开发一种算法来学习它们以及两者之间的映射。我们证明了这种表示可以有效地学习和推断机器人状态。我们将在模拟环境中和人形机器人Nao展示我们的实验。

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