Learning over the Attentional Space with Mobile Robots

Letícia M. Berto, L. Rossi, E. Rohmer, P. Costa, A. S. Simões, Ricardo Ribeiro Gudwin, E. Colombini
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Abstract

The advancement of technology has brought many benefits to robotics. Today, it is possible to have robots equipped with many sensors that collect different kinds of information on the environment all time. However, this brings a disadvantage: the increase of information that is received and needs to be processed. This computation is too expensive for robots and is very difficult when it has to be performed online and involves a learning process. Attention is a mechanism that can help us address the most critical data at every moment and is fundamental to improve learning. This paper discusses the importance of attention in the learning process by evaluating the possibility of learning over the attentional space. For this purpose, we modeled in a cognitive architecture the essential cognitive functions necessary to learn and used bottom-up attention as input to a reinforcement learning algorithm. The results show that the robot can learn on attentional and sensorial spaces. By comparing various action schemes, we find the set of actions for successful learning.
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移动机器人的注意力空间学习
技术的进步给机器人带来了许多好处。今天,有可能让机器人配备许多传感器,随时收集有关环境的各种信息。然而,这带来了一个缺点:接收和需要处理的信息增加了。这种计算对于机器人来说太昂贵了,而且当它必须在线执行并且涉及学习过程时非常困难。注意力是一种机制,可以帮助我们随时处理最关键的数据,是提高学习的基础。本文通过评价在注意空间上学习的可能性来讨论注意在学习过程中的重要性。为此,我们在认知架构中建模了学习所需的基本认知功能,并使用自下而上的注意力作为强化学习算法的输入。结果表明,该机器人能够在注意空间和感觉空间上进行学习。通过比较各种行动方案,我们找到了一套成功学习的行动。
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