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Hierarchical learning approach for one-shot action imitation in humanoid robots

机译:人形机器人单次动作模仿的分层学习方法

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We consider the issue of segmenting an action in the learning phase into a logical set of smaller primitives in order to construct a generative model for imitation learning using a hierarchical approach. Our proposed framework, addressing the “how-to” question in imitation, is based on a one-shot imitation learning algorithm. It incorporates segmentation of a demonstrated template into a series of subactions and takes a hierarchical approach to generate the task action by using a finite state machine in a generative way. Two sets of experiments have been conducted to evaluate the performance of the framework, both statistically and in practice, through playing a tic-tac-toe game. The experiments demonstrate that the proposed framework can effectively improve the performance of the one-shot learning algorithm and reduce the size of primitive space, without compromising the learning quality.
机译:我们认为在学习阶段将动作分割为逻辑集的较小基元,以便使用分层方法构建模拟学习的生成模型。我们提出的框架,解决了模仿中的“如何”问题,是基于一次性模仿学习算法。它包括将演示模板的分段集成到一系列子分层中,并采用分层方法,通过以生成方式使用有限状态机来生成任务操作。已经进行了两套实验,以评估统计和实践的框架的性能,通过演奏TIC-TAC-TOE游戏。该实验表明,所提出的框架可以有效地提高单拍学习算法的性能,并降低原始空间的大小,而不会影响学习质量。

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