Kinesthetic learning of behaviors in a humanoid robot
Sumin Cho, Sungho Jo
- 发表年份
- 2011
- 引用次数
- 4
摘要
This work presents an approach for learning of behaviors by kinesthetic teaching in a humanoid robot. The approach enables the robot to improve and reproduce a specific behavior incrementally every time a new teaching trial is provided, and therefore, it is more suitable for real-world human-robot interaction. The algorithm consists of projection of motion data to a latent space and description of motion data in a Gaussian Mixture Model (GMM). The latent space and GMM can be refined incrementally after each kinesthetic teaching. The number of components in the GMM is adjusted accordingly in a real-time manner. Experiments with a Nao humanoid robot show the feasibility of the approach. We demonstrate that the robot can reproduce learned behaviors well through continuous kinesthetic trials.
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