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Self-initiated imitation learning. Discovering what to imitate

机译:自我模仿学习。发现模仿的东西

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Imitation learning is an important area in robotics and agents research because it provides an easy way for robot programming and also a bootstrapping technique for social learning. Available learning by imitation systems implicitly or explicitly assume that the boundaries of the actions to be imitated are set by the demonstrator and that the robot is in some imitation mode during the whole interaction session. A less researched area is self-initiated imitation in which the robot needs to decide for itself what to imitate from another imitatee that may not be actively involved in the demonstration process. In this paper, we propose a self-initiated imitation engine based on combining techniques from time-series analysis and causality discovery. The paper also reports a series of proof of concept experiments using simulated and real robots. These evaluations show that the proposed approach is capable of discovering important patterns of behavior during the interaction session and faithfully reproduces them.
机译:模仿学习是机器人技术和代理研究的重要领域,因为它为机器人编程提供了简便的方法,并且为社交学习提供了引导技术。模仿系统的可用学习隐式或显式地假定要模仿的动作的边界由演示者设置,并且在整个交互过程中机器人处于某种模仿模式。研究较少的领域是自发模仿,机器人需要自行决定从另一个未积极参与演示过程的模仿者模仿什么。在本文中,我们提出了一种基于时间序列分析和因果关系发现技术的自启动模仿引擎。本文还报告了一系列使用模拟和真实机器人进行的概念验证实验。这些评估表明,所提出的方法能够发现交互过程中的重要行为模式,并忠实地再现它们。

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