A Random-Finite-Set Approach to Bayesian SLAM
Author
Abstract
This paper proposes an integrated Bayesian framework for feature-based simultaneous localization and map building (SLAM) in the general case of uncertain feature number and data association. By modeling the measurements and feature map as random finite sets (RFSs), a formulation of the feature-based SLAM problem is presented that jointly estimates the number and location of the features, as well as the vehicle trajectory. More concisely, the joint posterior distribution of the set-valued map and vehicle trajectory is propagated forward in time as measurements arrive, thereby incorporating both data association and feature management into a single recursion. Furthermore, the Bayes optimality of the proposed approach is established.
A first-order solution, which is coined as the probability hypothesis density (PHD) SLAM filter, is derived, which jointly propagates the posterior PHD of the map and the posterior distribution of the vehicle trajectory. A Rao-Blackwellized (RB) implementation of the PHD-SLAM filter is proposed based on the Gaussian-mixture PHD filter (for the map) and a particle filter (for the vehicle trajectory). Simulated and experimental results demonstrate the merits of the proposed approach, particularly in situations of high clutter and data association ambiguity.
General note
Artículo de publicación ISI
Patrocinador
Singapore National Research Foundation through the Singapore-Massachusetts Institute of Technology Alliance for Research and Technology Center for Environmental Sensing and Modeling
Australian Research Council DP0880553
DP0989007
Identifier
URI: https://repositorio.uchile.cl/handle/2250/125538
DOI: DOI: 10.1109/TRO.2010.2101370
ISSN: 1552-3098
Quote Item
IEEE TRANSACTIONS ON ROBOTICS Volume: 27 Issue: 2 Pages: 268-282 Published: APR 2011
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