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Learning Bayesian models of sensorimotor interaction: from random exploration toward the discovery of new behaviors

机译:学习贝叶斯互动的贝叶斯型号:从随机探索到发现新行为的发现

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We are interested in probabilistic models of space and navigation. We describe an experiment where a Koala robot uses experimental data, gathered by randomly exploring the sensorimotor space, so as to learn a model of its interaction with the environment. This model is then used to generate a variety of new behaviors, from obstacle avoidance to wall following to ball pushing, which were previously unknown by the robot. The learned model can be seen as a building block for a hierarchical control architecture based on the Bayesian Map formalism.
机译:我们对空间和航行的概率模型感兴趣。我们描述了一种实验,其中考拉机器人使用实验数据,通过随机探索感觉电流空间来收集,以便学习与环境的互动模型。然后,该模型用于产生各种新行为,从障碍物避免到墙壁推动,这是由机器人未知的。学习模型可以被视为基于贝叶斯地图形式主义的分层控制架构的构建块。

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