Learned stochastic mobility prediction for planning with control uncertainty on unstructured terrain


Autoria(s): Peynot, Thierry; Lui, Sin-Ting; McAllister, Rowan; Fitch, Robert; Sukkarieh, Salah
Data(s)

2014

Resumo

Motion planning for planetary rovers must consider control uncertainty in order to maintain the safety of the platform during navigation. Modelling such control uncertainty is difficult due to the complex interaction between the platform and its environment. In this paper, we propose a motion planning approach whereby the outcome of control actions is learned from experience and represented statistically using a Gaussian process regression model. This mobility prediction model is trained using sample executions of motion primitives on representative terrain, and predicts the future outcome of control actions on similar terrain. Using Gaussian process regression allows us to exploit its inherent measure of prediction uncertainty in planning. We integrate mobility prediction into a Markov decision process framework and use dynamic programming to construct a control policy for navigation to a goal region in a terrain map built using an on-board depth sensor. We consider both rigid terrain, consisting of uneven ground, small rocks, and non-traversable rocks, and also deformable terrain. We introduce two methods for training the mobility prediction model from either proprioceptive or exteroceptive observations, and report results from nearly 300 experimental trials using a planetary rover platform in a Mars-analogue environment. Our results validate the approach and demonstrate the value of planning under uncertainty for safe and reliable navigation.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/76269/

Publicador

John Wiley & Sons, Inc.

Relação

http://eprints.qut.edu.au/76269/1/JFR-MobilityPrediction-2014_Accepted.pdf

DOI:10.1002/rob.21536

Peynot, Thierry, Lui, Sin-Ting, McAllister, Rowan, Fitch, Robert, & Sukkarieh, Salah (2014) Learned stochastic mobility prediction for planning with control uncertainty on unstructured terrain. Journal of Field Robotics, 31(6), pp. 969-995.

DIISR AUSTRALIAN GOV/Australian Space Research Program

AFRL/FA2386-10-1-4153

Direitos

Copyright 2014 Wiley Periodicals, Inc.

This is the accepted version of the following article: [full citation], which has been published in final form at [Link to final article]

Fonte

School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING #mobile robotics #planetary rover #mobility prediction #learning #motion planning
Tipo

Journal Article