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Hierarchical Interest-Driven Goal Babbling for Efficient Bootstrapping of Sensorimotor skills

机译:分层兴趣驱动的目标游说,以有效引导感觉运动技能

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We propose a novel hierarchical online learning scheme for fast and efficient bootstrapping of sensorimotor skills. Our scheme permits rapid data-driven robot model learning in a "learning while behaving" fashion. It is updated continuously to adapt to time-dependent changes and driven by an intrinsic motivation signal. It utilizes an online associative radial basis function network, which is the first associative dynamic network to be constructed from scratch with high stability. Moreover, we propose a parameter-sharing technique to increase efficiency, stabilize the online scheme, avoid exhaustive parameter tuning, and speed up the learning process. We apply our proposed algorithms on a 7-DoF physical robot manipulator and demonstrate their performance and efficiency.
机译:我们提出了一种新的等级在线学习方案,用于快速有效的传感器技能启动。我们的计划允许快速数据驱动的机器人模型学习在“学习时行为”时尚。它是不断更新的,以适应时间依赖的变化,并由内在动机信号驱动。它利用在线关联径向基函数网络,这是第一个由具有高稳定性构造的关联动态网络。此外,我们提出了一个参数共享技术来提高效率,稳定在线方案,避免彻底的参数调整,加快学习过程。我们在7 DOF物理机器人机械手上应用我们提出的算法,并展示其性能和效率。

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