Following work on joint object-action representations, the functional object-oriented network (FOON) was introduced as a knowledge graph representation for robots. Taking the form of a bipartite graph, a FOON contains symbolic or high-level information that would be pertinent to a robot's understanding of its environment and tasks in a way that mirrors human understanding of actions. In this work, we outline a road-map for future development of FOON and its application in robotic systems for task planning as well as knowledge acquisition from demonstration. We propose preliminary ideas to show how a FOON can be created in a real-world scenario with a robot and human teacher in a way that can jointly augment existing knowledge in a FOON and teach a robot the skills it needs to replicate the demonstrated actions and solve a given manipulation problem.
翻译:在就联合目标-行动说明开展工作之后,将功能性目标导向网络(FOON)作为机器人的知识图表表示。以双部分图的形式,FOON包含象征性或高级信息,与机器人对其环境和任务的理解有关,从而反映人类对行动的理解。在这项工作中,我们概述了FOON的未来发展及其应用于机器人系统的任务规划以及从演示获取知识的路线图。我们提出了初步想法,以显示如何在现实世界中与机器人和人类教师一起创造FOON,这样可以共同增加FOON的现有知识,并教机器人复制所证明的行动和解决特定操纵问题所需要的技能。