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引用次数: 54

摘要

在本文中,我们解决了教机器人执行各种任务的问题。我们提出了一种基于行为的方法,扩展了机器人的能力,使它们能够从自己与人类互动的经验中学习复杂任务的表示,并利用获得的知识反过来教授其他机器人。学习机器人跟随人类或机器人老师,并将自己对环境的观察映射到其内部行为,在运行时以行为网络的形式构建经验任务的表示。为了实现这一点,我们引入了一个架构,该架构允许表示和执行复杂而灵活的行为序列,并引入了一个在线算法,该算法可以根据观察构建任务表示。我们在一组人类(教师)-机器人(学习者)和机器人(教师)-机器人(学习者)实验中展示了我们的方法,在这些实验中,机器人学习多个任务的表示,并且即使在有可能阻碍学习和执行过程的干扰对象的环境中也能够执行它们。
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Experience-based representation construction: learning from human and robot teachers
In this paper we address the problem of teaching robots to perform various tasks. We present a behavior-based approach that extends the capabilities of robots, allowing them to learn representations of complex tasks from their own experiences of interacting with a human, and to use the acquired knowledge to teach other robots in turn. A learner robot follows a human or robot teacher and maps its own observations of the environment to its internal behaviors, building at run-time a representation of the experienced task in the form of a behavior network. To enable this, we introduce an architecture that allows the representation and execution of complex and flexible sequences of behaviors and an online algorithm that builds the task representation from observations. We demonstrate our approach in a set of human(teacher)-robot(learner) and robot(teacher)-robot(learner) experiments, in which the robots learn representations for multiple tasks and are able to execute them even in environments with distractor objects that could hinder the learning and the execution process.
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