Metric State Space Reinforcement Learning for a Vision-Capable Mobile Robot
Loading...
Date
Authors
Zhumatiy, Viktor
Gomez, Faustino
Hutter, Marcus
Schmidhuber, Jürgen
Journal Title
Journal ISSN
Volume Title
Publisher
IOS Press
Abstract
We address the problem of autonomously learning controllers for
vision-capable mobile robots. We extend McCallum's (1995)
Nearest-Sequence Memory algorithm to allow for general metrics
over state-action trajectories. We demonstrate the feasibility of
our approach by successfully running our algorithm on a real
mobile robot. The algorithm is novel and unique in that it (a)
explores the environment and learns directly on a mobile robot
without using a hand-made computer model as an intermediate step,
(b) does not require manual discretization of the sensor input
space, (c) works in piecewise continuous perceptual spaces, and
(d) copes with partial observability. Together this allows
learning from much less experience compared to previous methods.
Description
Keywords
Citation
Collections
Source
Type
Book Title
Intelligent autonomous systems 9