发展机器人的探索策略:一个统一的概率框架

Clément Moulin-Frier, Pierre-Yves Oudeyer
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引用次数: 53

摘要

我们提出了一个概率框架,统一了两个重要的探索机制家族,最近被证明可以有效地学习复杂的非线性冗余感觉运动映射。这两种探索机制分别是:1)目标胡言乱语(goal babbling), 2)由经验测量的学习进度最大化驱动的主动学习。我们展示了这个通用框架如何允许对几个最近的算法架构进行建模以进行探索。然后,我们提出了一个使用高斯混合模型的特殊实现,该模型同时提供了一个原始的能力进步的经验度量。最后,我们对两种模拟设置进行了计算机模拟:7自由度手臂末端执行器的控制和铰接合成器产生的共振峰的控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration strategies in developmental robotics: A unified probabilistic framework
We present a probabilistic framework unifying two important families of exploration mechanisms recently shown to be efficient to learn complex non-linear redundant sensorimotor mappings. These two explorations mechanisms are: 1) goal babbling, 2) active learning driven by the maximization of empirically measured learning progress. We show how this generic framework allows to model several recent algorithmic architectures for exploration. Then, we propose a particular implementation using Gaussian Mixture Models, which at the same time provides an original empirical measure of the competence progress. Finally, we perform computer simulations on two simulated setups: the control of the end effector of a 7-DoF arm and the control of the formants produced by an articulatory synthesizer.
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