A neural-network based approach for recognition of pose and motion gestures on a mobile robot - Robotics Institute Carnegie Mellon University

A neural-network based approach for recognition of pose and motion gestures on a mobile robot

S. Waldherr, Sebastian Thrun, and Richard Romero
Conference Paper, Proceedings of the 5th Brazilian Symposium on Neural Networks, pp. 79 - 84, December, 1998

Abstract

Since a variety of changes in both robotic hardware and software suggests that service robots will soon become possible, to find "natural" ways of communication between human and robots is of fundamental importance for the robotic field. The paper describes a gesture-based interface for human-robot interaction, which enables people to instruct robots through easy-to-perform arm gestures. Such gestures might be static pose gestures, which involve only a specific configuration of the person's arm, or they might be dynamic motion gestures, that is, they involve motion (such as waving). Gestures are recognized in real-time at approximate frame rate, using neural networks. A fast, color-based tracking algorithm enables the robot to track and follow a person reliably through office environments with drastically changing lighting conditions. Results are reported in the context of an interactive clean-up task, where a person guides the robot to specific locations that need to be cleaned, and the robot picks up trash which it then delivers to the nearest trash-bin.

BibTeX

@conference{Waldherr-1998-14825,
author = {S. Waldherr and Sebastian Thrun and Richard Romero},
title = {A neural-network based approach for recognition of pose and motion gestures on a mobile robot},
booktitle = {Proceedings of the 5th Brazilian Symposium on Neural Networks},
year = {1998},
month = {December},
pages = {79 - 84},
}