Home /Research /ViCA: Combining visual, social, and task-oriented conversational AI in a healthcare setting
PERCEPTION

ViCA: Combining visual, social, and task-oriented conversational AI in a healthcare setting

George Pantazopoulos, Jeremy Bruyere, Malvina Nikandrou, Thibaud Boissier, Supun Hemanthage, Binha Kumar Sachish, Christian Dondrup, Oliver Lemon

Year
2021
Citations
4

Abstract

Recent developments in computer vision and conversational systems have provided the AI community with novel perspectives towards improving the cognitive capabilities of engaging socially assistive robots. We show how to develop conversational skills for a hospital receptionist robot that incorporates social conversation based on visual information as well as task-based dialog. Fusing the traditional modular conversational system architecture with recent developments in computer vision and scene graph research, our agent (called ‘ViCA’) supports both visual question answering and social conversational capabilities based on the visual scene. In particular, our agent can provide guidance to users by locating visible objects in the room and can engage in social dialog using visual prompts, such as the user’s clothing or possessions. We conduct a comprehensive online evaluation study with 21 participants, showcasing that the ViCA system is perceived as both helpful and entertaining.

Keywords

Task (project management)Computer scienceHuman–computer interactionHealth careEngineeringSystems engineering

Related papers

Browse all PERCEPTION papers