Title :
Gaussian Process Models for Indoor and Outdoor Sensor-Centric Robot Localization
Author :
Brooks, Alex ; Makarenko, Alexei ; Upcroft, Ben
Author_Institution :
Australian Res. Council (ARC) Centre of Excellence for Autonomous Syst., Univ. of Sydney, Sydney, NSW
Abstract :
This paper presents an approach to building a map from a sparse set of noisy observations, taken from known locations by a sensor with no obvious geometric model. The basic approach is to fit an interpolant to the training data, representing the expected observation, and to assume additive sensor noise. This paper takes a Bayesian view of the problem, maintaining a posterior over interpolants rather than simply the maximum-likelihood interpolant, giving a measure of uncertainty in the map at any point. This is done using a Gaussian process (GP) framework. The approach is validated experimentally both in an indoor office environment and an outdoor urban environment, using observations from an omnidirectional camera mounted on a mobile robot. A set of training data is collected from each environment and processed offline to produce a GP model. The robot then uses that model to localize while traversing each environment.
Keywords :
Bayes methods; Gaussian processes; interpolation; mobile robots; Bayesian view; Gaussian process framework; Gaussian process model; additive sensor noise; indoor office environment; indoor sensor-centric robot localization; maximum-likelihood interpolant; mobile robot; noisy observation; omnidirectional camera; outdoor sensor-centric robot localization; outdoor urban environment; posterior over interpolant; sparse set; uncertainty measure; Appearance-based localization; Gaussian processes; mobile robot localization;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2008.2004887