Robotics: Science and Systems V
POMDPs for robotic tasks with mixed observability
S. C. W. Ong, S. W. Png, D. Hsu and W. S. LeeAbstract:
Partially observable Markov decision processes (POMDPs) provide a principled mathematical framework for motion planning of autonomous robots in uncertain and dynamic environments. They have been successfully applied to various robotic tasks, but a major challenge is to scale up POMDP algorithms for more complex robotic systems. Robotic systems often have mixed observability: even when a robotâs state is not fully observable, some components of the state may still be fully observable. Exploiting this, we use a factored model to represent separately the fully and partially observable components of a robotâs state and derive a compact lowerdimensional representation of its belief space. We then use this factored representation in conjunction with a point-based algorithm to compute approximate POMDP solutions. Separating fully and partially observable state components using a factored model opens up several opportunities to improve the efficiency of point-based POMDP algorithms. Experiments show that on standard test problems, our new algorithm is many times faster than a leading point-based POMDP algorithm.
Bibtex:
@INPROCEEDINGS{ Ong-RSS-09, AUTHOR = {S. C. W. Ong AND S. W. Png AND D. Hsu AND W. S. Lee}, TITLE = {{POMDP}s for robotic tasks with mixed observability}, BOOKTITLE = {Proceedings of Robotics: Science and Systems}, YEAR = {2009}, ADDRESS = {Seattle, USA}, MONTH = {June}, DOI = {10.15607/RSS.2009.V.026} }