基于感知数据熵最大化的机器人传感器自适应与发展

L. Olsson, Chrystopher L. Nehaniv, D. Polani
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引用次数: 23

摘要

提出了一种使机器人传感器适应当前环境统计结构的方法。这使机器人能够压缩传入的感官信息,并找到传感器之间的信息关系。将该方法应用于开发机器人的传感器信息关系的传感主题地图的创建,其中传感器之间的信息距离使用信息论和自适应分组计算。该方法不断估计最新输入的概率分布,使每个传感器的熵最大化,同时保持不同传感器之间的相关性。模拟和视觉传感器机器人实验的结果表明,感官数据的自适应分类有助于系统发现普通分类无法发现的结构。这使得发展中的机器人感知系统能够更加适应机器人和环境的具体体现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor adaptation and development in robots by entropy maximization of sensory data
A method is presented for adapting the sensors of a robot to the statistical structure of its current environment. This enables the robot to compress incoming sensory information and to find informational relationships between sensors. The method is applied to creating sensoritopic maps of the informational relationships of the sensors of a developing robot, where the informational distance between sensors is computed using information theory and adaptive binning. The adaptive binning method constantly estimates the probability distribution of the latest inputs to maximize the entropy in each individual sensor, while conserving the correlations between different sensors. Results from simulations and robotic experiments with visual sensors show how adaptive binning of the sensory data helps the system to discover structure not found by ordinary binning. This enables the developing perceptual system of the robot to be more adapted to the particular embodiment of the robot and the environment.
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