论文标题
学会通过NICO和成长的网络自主到达对象
Learning to Autonomously Reach Objects with NICO and Grow-When-Required Networks
论文作者
论文摘要
伸向物体的行为是机器人代理的基本而复杂的技能,需要高度的视觉控制和协调。考虑到动态环境,需要自主适应新情况的机器人。在本文中,用于在NICO(神经启发的伴侣)平台上自主学习视觉运动的协调,以实现对象达到的任务。机器人与环境互动,并了解电机命令与基于HEBBIAN学习的时间相关的感官感知之间的关联。通过首先学习如何将凝视引导到视觉刺激,然后学习手臂的运动控制,并最终学习如何使用眼手配位来学习如何达到对象,因此使用了多个成长时(GWR)网络来学习越来越复杂的室内行为。我们证明该模型能够处理NICO身体的不可预见的机械变化,显示了所提出的方法的适应性。在评估我们的方法时,我们表明类人型机器人NICO能够以76%的成功率达到对象。
The act of reaching for an object is a fundamental yet complex skill for a robotic agent, requiring a high degree of visuomotor control and coordination. In consideration of dynamic environments, a robot capable of autonomously adapting to novel situations is desired. In this paper, a developmental robotics approach is used to autonomously learn visuomotor coordination on the NICO (Neuro-Inspired COmpanion) platform, for the task of object reaching. The robot interacts with its environment and learns associations between motor commands and temporally correlated sensory perceptions based on Hebbian learning. Multiple Grow-When-Required (GWR) networks are used to learn increasingly more complex motoric behaviors, by first learning how to direct the gaze towards a visual stimulus, followed by learning motor control of the arm, and finally learning how to reach for an object using eye-hand coordination. We demonstrate that the model is able to deal with an unforeseen mechanical change in the NICO's body, showing the adaptability of the proposed approach. In evaluations of our approach, we show that the humanoid robot NICO is able to reach objects with a 76% success rate.