Towards A Framework For Dancing Beyond Demonstration
Patrick Martin, Kate Sicchio, Charles Dietzel, Alicia Olivo
- 发表年份
- 2022
- 引用次数
- 4
- 访问权限
- 开放获取
摘要
This paper presents a prototype framework for developing real-time human-robot performances and its application within a recent choreographic work for the stage. The framework allows dancers to teach new motions to robots, while also giving choreographers the ability to compose performances from pre-built and learned behaviors. To achieve this capability, we combine behavior-based robotics and learning from demonstration approaches to construct behaviors and compose them into a performance. Our learning algorithm, dancing-from-demonstration (DfD), allows dancers and choreographers to teach new phrases to the robot and specify choreographic motifs for the performance. This collaborative work culminated in a human-robot duet, where the robot incorporates a new, learned motion into its choreography within live performance. These capabilities create a baseline for choreographers and dancers to eventually compose and perform in more dynamic, reactive choreo-robotic performances.
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