A Gesture-Centric Android System for Multi-Party Human-Robot Interaction
Yutaka Kondo, Kentaro Takemura, Jun Takamatsu, Tsukasa Ogasawara
- Year
- 2013
- Citations
- 43
- Access
- Open access
Abstract
Natural body gesturing and speech dialogue, is crucial for human-robot interaction (HRI) and human-robot symbiosis. Real interaction is not only with one-to-one communication but also among multiple people. We have therefore developed a system that can adjust gestures and facial expressions based on a speaker's location or situation for multi-party communication. By extending our already developed real-time gesture planning method, we propose a gesture adjustment suitable for human demand through motion parameterization and gaze motion planning, which allows communication through eye-to-eye contact. We implemented the proposed motion planning method on an android Actroid-SIT and we proposed to use a Key-Value Store to connect the components of our systems. The Key-Value Store is a high-speed and lightweight dictionary database with parallelism and scalability. We conducted multi-party HRI experiments for 1,662 subjects in total. In our HRI system, over 60% of subjects started speaking to the Actroid, and the residence time of their communication also became longer. In addition, we confirmed our system gave humans a more sophisticated impression of the Actroid.
Keywords
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