Home /Research /Prediction and imitation of other's motions by reusing own forward-inverse model in robots
LEARNING

Prediction and imitation of other's motions by reusing own forward-inverse model in robots

Tetsuya Ogata, Ryunosuke Yokoya, Jun Tani, Kazunori Komatani, Hiroshi G. Okuno

Year
2009
Citations
10

Abstract

This paper proposes a model that enables a robot to predict and imitate the motions of another by reusing its body forward-inverse model. Our model includes three approaches: (i) projection of a self-forward model for predicting phenomena in the external environment (other individuals), (ii) ldquotriadic relationrdquo that is mediation by a physical object between self and others, (iii) introduction of infant imitation by a parent. The recurrent neural network with parametric bias (RNNPB) model is used as the robot's self forward-inverse model. A group of hierarchical neural networks are attached to the RNNPB model as ldquoconversion modulesrdquo. Experiments demonstrated that a robot with our model could imitate a human's motions by translating the viewpoint. It could also discriminate known/unknown motions appropriately, and associate whole motion dynamics from only one motion snap image.

Keywords

RobotImitationComputer scienceMotion (physics)Artificial intelligenceInverseParametric modelArtificial neural networkHumanoid robotParametric statistics

Related papers

Browse all LEARNING papers