Humanoid Robots and Spoken Dialog Systems for Brief Health Interventions
Saminda Abeyruwan, Ramesh Baral, Ugan Yasavur, Christine Lisetti, Ubbo Visser
- Year
- 2014
- Citations
- 2
Abstract
We combined a spoken dialog system that we developed to deliver brief health interventions with the fully autonomous humanoid robot (NAO). The dialog system is based on a framework facilitating Markov decision processes (MDP). It is optimized using reinforcement learning (RL) algorithms with data we collected from real user interactions. The system begins to learn optimal dialog strategies for initiative selection and for the type of confirmations that it uses during theinteraction. The health intervention, delivered by a 3D character instead of the NAO, has already been evaluated, with positive results in terms of task completion, ease of use, and future intention to use the system. The current spoken dialog system for the humanoid robot is a novelty and exists so far as a proof ofconcept.
Keywords
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