Home /Research /Real-time trajectory/profile learning for robots in human-robot interactions
HRI

Real-time trajectory/profile learning for robots in human-robot interactions

J.Y.S. Luh, Shuyi Hu

Year
2002
Citations
4

Abstract

In the process of human-robot interaction, effective representation and real-time learning of manipulator's trajectory/profile in response to human's motion are presented. Method of obtaining approximate solutions during the learning stage are introduced to circumvent the noise effect caused by numerical inaccuracy and computational errors. Perturbed solutions are derived as an alternative approach to overcome the noise effect. Simulation examples are given to illustrate every stage of the presentation.

Keywords

TrajectoryRobotComputer scienceNoise (video)Representation (politics)Process (computing)Motion (physics)Human–robot interactionArtificial intelligenceControl theory (sociology)

Related papers

Browse all HRI papers