感觉运动偶然性探索的返回抑制机制

Quentin Houbre, Alexandre Angleraud, R. Pieters
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引用次数: 0

摘要

认知建模是设计越来越自主的机器人的基础。事实上,研究人员从人类和动物的认知中获得灵感,以赋予机器人学习和适应环境的能力。在特定的情况下,机器人必须在探索环境和利用自身经验来提高技能知识之间找到正确的妥协。我们的方法考虑了一个基于探索和利用的神经启发模型来学习感觉运动偶然事件。对于探索,执行抑制返回机制以产生新的动作。在这项工作中,我们研究了返回抑制的调节如何影响探索行为。为此,我们设置了一个实验,一个3D打印的人形机器人手臂GummiArm必须学习如何在只有视觉反馈的情况下移动婴儿移动玩具。结果表明,返回抑制的调节影响了探索行为,导致感觉运动偶然事件的更快学习以及对减少的运动空间的探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Inhibition of Return Mechanism for the Exploration of Sensorimotor Contingencies
The modelling of cognition is fundamental to designing robots that are increasingly more autonomous. Indeed, researchers take inspiration from human and animal cognition in order to endow robots with the ability to learn and adapt to their environment. In specific cases, the robot has to find the right compromise between exploring the environment, or exploiting its own experience to advance its knowledge of a skill. Our approach considers a neurally-inspired model to learning sensorimotor contingencies based on exploration and exploitation. For the exploration, an inhibition of return mechanism is implemented that generates new actions. In this work, we investigate how the tuning of the inhibition of return affects the exploratory behavior. To do so, we set up an experiment where a 3D printed humanoid robot arm GummiArm has to learn how to move a baby mobile toy with only a visual feedback. The results demonstrate that the tuning of the inhibition of return influences the exploratory behavior, leading to a faster learning of sensorimotor contingencies as well as the exploration of a reduced motor space.
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