Augmenting Knowledge through Statistical, Goal-Oriented Human-Robot Dialog

Saeid Amiri1, Sujay Bajracharya2, Cihangir Goktolga1, Jesse Thomason3, Shiqi Zhang1

  • 1SUNY Binghamton
  • 2Cleveland State university
  • 3University of Washington

Details

11:15 - 11:30 | Tue 5 Nov | LG-R19 | TuAT19.2

Session: AI-Based Methods for Robotics

Abstract

Some robots can interact with humans using natural language, and identify service requests through human-robot dialog. However, few robots are able to improve their language capabilities from this experience. In this paper, we develop a dialog agent for robots that is able to interpret user commands using a semantic parser, while asking clarification questions using a probabilistic dialog manager. This dialog agent is able to augment its knowledge base and improve its language capabilities by learning from dialog experiences, e.g., adding new entities and learning new ways of referring to existing entities. We have extensively evaluated our dialog system in simulation as well as with human participants through MTurk and real-robot platforms. We demonstrate that our dialog agent performs better in efficiency and accuracy in comparison to baseline learning agents. Demo video can be found at url{https://youtu.be/DFB3jbHBqYE}