Generating Spatial Referring Expressions in a Social Robot: Dynamic vs. Non-ambiguous

Front Robot AI. 2019 Aug 2:6:67. doi: 10.3389/frobt.2019.00067. eCollection 2019.

Abstract

Generating spatial referring expressions is key to allowing robots to communicate with people in an environment. The focus of most algorithms for generation is to create a non-ambiguous description, and how best to deal with the combination explosion this can create in a complex environment. However, this is not how people naturally communicate. Humans tend to give an under-specified description and then rely on a strategy of repair to reduce the number of possible locations or objects until the correct one is identified, what we refer to here as a dynamic description. We present here a method for generating these dynamic descriptions for Human Robot Interaction, using machine learning to generate repair statements. We also present a study with 61 participants in a task on object placement. This task was presented in a 2D environment that favored a non-ambiguous description. In this study we demonstrate that our dynamic method of communication can be more efficient for people to identify a location compared to one that is non-ambiguous.

Keywords: Human Robot Interaction; dynamic description; machine learning; natural language; spatial referring expressions; user study.