Home /Research /Developing Social Robots with Empathetic Non-Verbal Cues Using Large Language Models
HRI

Developing Social Robots with Empathetic Non-Verbal Cues Using Large Language Models

Yoon Kyung Lee, Yoonwon Jung, Gyuyi Kang, Sowon Hahn

Year
2023
Access
Open access

Abstract

We propose augmenting the empathetic capacities of social robots by integrating non-verbal cues. Our primary contribution is the design and labeling of four types of empathetic non-verbal cues, abbreviated as SAFE: Speech, Action (gesture), Facial expression, and Emotion, in a social robot. These cues are generated using a Large Language Model (LLM). We developed an LLM-based conversational system for the robot and assessed its alignment with social cues as defined by human counselors. Preliminary results show distinct patterns in the robot's responses, such as a preference for calm and positive social emotions like 'joy' and 'lively', and frequent nodding gestures. Despite these tendencies, our approach has led to the development of a social robot capable of context-aware and more authentic interactions. Our work lays the groundwork for future studies on human-robot interactions, emphasizing the essential role of both verbal and non-verbal cues in creating social and empathetic robots.

Keywords

cs.ROcs.AIcs.HC

Related papers

Browse all HRI papers