Performing joint interaction requires constant mutual monitoring of own actions and their effects on the other's behaviour. Such an action-effect monitoring is boosted by social cues and might result in an increasing sense of agency. Joint actions and joint attention are strictly correlated and both of them contribute to the formation of a precise temporal coordination. In human-robot interaction, the robot's ability to establish joint attention with a human partner and exploit various social cues to react accordingly is a crucial step in creating communicative robots. Along the social component, an effective human-robot interaction can be seen as a new method to improve and make the robot's learning process more natural and robust for a given task. In this work we use different social skills, such as mutual gaze, gaze following, speech and human face recognition, to develop an effective teacher-learner scenario tailored to visual object learning in dynamic environments. Experiments on the iCub robot demonstrate that the system allows the robot to learn new objects through a natural interaction with a human teacher in presence of distractors.
翻译:进行联合互动需要不断相互监测自身的行为及其对对方行为的影响。这种行动效果监测通过社会提示得到增强,并可能导致一种日益强烈的机构意识。联合行动和共同关注是密切相关的,它们都有助于形成准确的时间协调。在人与机器人的互动中,机器人与人类伙伴建立共同关注并利用各种社会提示进行相应反应的能力,是创建通信机器人的关键一步。在社会组成部分中,有效的人与机器人互动可被视为一种新方法,用来改进机器人的学习过程,使之更自然,更强有力地适应特定任务。在这项工作中,我们使用不同的社会技能,如相互凝视、关注后视、言语和人面识别,以开发一种有效的师与利纳情景,适合视觉对象在动态环境中学习。iCub机器人的实验表明,系统允许机器人通过在离心器面前与人类教师的自然互动学习新物体。