首页 /研究 /Robotic imitation for human motion capture using gaussian processes
LEARNING

Robotic imitation for human motion capture using gaussian processes

Aaron P. Shon, Keith Grochow, Rajesh P. N. Rao

发表年份
2006
引用次数
71

摘要

Programming by demonstration, also called "imitation learning," offers the possibility of flexible, easily modifiable robotic systems. Full-fledged robotic imitation learning comprises many difficult subtasks. However, we argue that, at its core, imitation learning reduces to a regression problem. We propose a two-step framework in which an imitating agent first performs a regression from a high-dimensional observation space to a low-dimensional latent variable space. In the second step, the agent performs a regression from the latent variable space to a high-dimensional space representing degrees of freedom of its motor system. We demonstrate the validity of the approach by learning to map motion capture data from human actors to a humanoid robot. We also contrast use of several low-dimensional latent variable spaces, each covering a subset of agents' degrees of freedom, with use of a single, higher-dimensional latent variable space. Our findings suggest that compositing several regression models together yields qualitatively better imitation results than using a single, more complex regression model

关键词

Latent variableHumanoid robotArtificial intelligenceComputer scienceImitationMotion captureVariable (mathematics)Latent variable modelDegrees of freedom (physics and chemistry)Space (punctuation)

相关论文

查看 LEARNING 分类全部论文