首页 /研究 /Periodic nonlinear principal component neural networks for humanoid motion segmentation, generalization, and generation
LEARNING

Periodic nonlinear principal component neural networks for humanoid motion segmentation, generalization, and generation

Karl F. MacDorman, Rawichote Chalodhorn, M. Asada

发表年份
2004
引用次数
10

摘要

In an experiment with a soccer playing robot, periodic temporally-constrained nonlinear principal component neural networks (NLPCNNs) are shown to characterize humanoid motion effectively by exploiting fundamental sensorimotor relationships. Each network learns a periodic or transitional trajectory in a phase space of possible actions, and thus abstracts a kind of protosymbol. NLPCNNs can play a key role in a system that learns to imitate people, enabling a robot to recognize the behavior of others because it has grounded that behavior in terms of its own bodily movements.

关键词

Humanoid robotTrajectoryGeneralizationMotion (physics)Computer scienceComponent (thermodynamics)Artificial intelligenceRobotKey (lock)Nonlinear system

相关论文

查看 LEARNING 分类全部论文