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Learning motor dependent Crutchfield's information distance to anticipate changes in the topology of sensory body maps

机译:学习电机依赖的Cruckfield的信息距离,以期待感官身体地图拓扑的变化

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What can a robot learn about the structure of its own body when he does not already know the semantics, the type and the position of its sensors and motors? Previous work has shown that an information theoretic approach, based on pairwise Crutchfield's information distance on sensorimotor channels, could allow to measure the informational topology of the set of sensors, i.e. reconstruct approximately the topology of the sensory body map. In this paper, we argue that the informational sensors topology changes with motor configurations in many robotic bodies, but yet, because measuring Crutchfield's distance is very time consuming, it is impossible to remeasure the body's topology for each novel motor configuration. Rather, a model should be learnt that allows the robot to predict Crutchfield's informational distances, and thus anticipate informational body maps, for novel motor configurations. We present experiments showing that learning motor dependent Crutchfield distances can indeed be achieved.
机译:机器人可以在他尚未了解其传感器和电机的语义时学习自己的身体的结构吗?以前的工作已经表明,信息理论方法的基础上,上感觉通道成对的Crutchfield的信息的距离,可能允许测量组传感器的信息的拓扑结构,即重建大约感官体地图的拓扑结构。在本文中,我们认为,信息的传感器拓扑结构,在许多机器人机构电机配置,但没有发生任何变化,因为测量Crutchfield公司的距离是非常耗时,也不可能重新测量人体的拓扑结构为每个新的电机配置。相反,应该学习一个模型,使机器人能够预测Cruckfield的信息距离,因此预期的信息身体地图,用于新颖的电动机配置。我们提出了实验,表明实际上可以实现学习电动机依赖的Cruckfield距离。

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