“…At a high level, the key to the symbol grounding problem lies in how object, spatial relation, and attribute classifiers, and primitive robot actions, can be linked to the semantic representations of sentences. Many approaches exist, including attributed relational graph matching [5], defining robot actions in terms of goal states or action sequences [5,16], probabilistic graphical models such as conditional random fields and hierarchical adaptive distributed correspondence graphs [41,48,49], and active and interactive learning to learn new words and classifiers [25,50,51].…”