Autonomous reuse of motor exploration trajectories

Fabien C. Y. Benureau, Pierre-Yves Oudeyer
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引用次数: 5

Abstract

We present an algorithm for transferring exploration strategies between tasks that share a common motor space in the context of lifelong autonomous learning in robotics. The algorithm does not transfer observations, or make assumptions about how the learning is conducted. Instead, only selected motor commands are transferred between tasks, chosen autonomously according to an empirical measure of learning progress. We show that on a wide variety of variations from a source task, such as changing the object the robot is interacting with or altering the morphology of the robot, this simple and flexible transfer method increases early performance significantly in the new task. We also provide examples of situations where the transfer is not helpful.
运动探索轨迹的自主重用
在机器人终身自主学习的背景下,我们提出了一种在共享共同运动空间的任务之间转移探索策略的算法。该算法不会转移观察结果,也不会对如何进行学习做出假设。相反,只有选定的运动命令在任务之间传递,根据学习进度的经验衡量自主选择。我们表明,在源任务的各种变化中,例如改变机器人与之交互的对象或改变机器人的形态,这种简单而灵活的转移方法显着提高了新任务的早期性能。我们还提供了一些情况的例子,其中转移是没有帮助的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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