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Intrinsically motivated multimodal structure learning

机译:本质上有动机的多模式结构学习

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摘要

We present a long-term intrinsically motivated structure learning method for modeling transition dynamics during controlled interactions between a robot and semipermanent structures in the world. These structures serve as the basis for a number of possible future tasks defined as Markov Decision Processes (MDPs). We apply a structure learning technique to a multimodal affordance representation that yields a population of forward models for use in planning. We evaluate the approach using experiments on a bimanual mobile manipulator (uBot-6) that show the performance of model acquisition as the number of transition actions increases.
机译:我们提出了一种长期内在动机的结构学习方法,用于在世界上机器人和半肢体结构之间的控制相互作用期间建模转换动态。这些结构作为定义为Markov决策过程(MDP)的许多可能的未来任务的基础。我们将结构学习技术应用于多模式可供表现,以产生用于规划的前向模型的群体。我们使用对Bimanual移动机械手(UBOT-6)的实验评估方法,该方法显示出模型采集的性能随着转换动作的数量增加而增加。

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