Behaviour selection has been an active research topic for robotics, in particular in the field of human-robot interaction. For a robot to interact effectively and autonomously with humans, the coupling between techniques for human activity recognition, based on sensing information, and robot behaviour selection, based on decision-making mechanisms, is of paramount importance. However, most approaches to date consist of deterministic associations between the recognised activities and the robot behaviours, neglecting the uncertainty inherent to sequential predictions in real-time applications. In this paper, we address this gap by presenting a neurorobotics approach based on computational models that resemble neurophysiological aspects of living beings. This neurorobotics approach was compared to a non-bioinspired, heuristics-based approach. To evaluate both approaches, a robot simulation is developed, in which a mobile robot has to accomplish tasks according to the activity being performed by the inhabitant of an intelligent home. The outcomes of each approach were evaluated according to the number of correct outcomes provided by the robot. Results revealed that the neurorobotics approach is advantageous, especially considering the computational models based on more complex animals.
翻译:行为选择是机器人的一个积极研究课题,特别是在人-机器人相互作用领域。对于机器人来说,行为选择是一个有效自主地与人类互动的活跃研究课题。对于机器人来说,基于遥感信息和基于决策机制的机器人行为选择,将人类活动识别技术与基于遥感信息的机器人行为选择技术结合起来至关重要。然而,迄今为止,大多数方法都包括公认的活动和机器人行为之间的决定性联系,忽视了实时应用中顺序预测所固有的不确定性。在本文中,我们通过提出一种基于类似于生命神经生理方面的计算模型的神经机器人方法来解决这一差距。这种神经机器人方法与一种非生物激励的、基于超自然学的方法相比较。为了评估这两种方法,我们开发了机器人模拟方法,其中移动机器人必须根据智能家居民所从事的活动完成任务。每种方法的结果都根据机器人提供的正确结果数量进行评估。结果显示,神经机器人方法是有利的,特别是考虑到基于更复杂的动物的计算模型。