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GVU Technical Report
Number: GIT-GVU-04-21
Title:
Dirichlet Process based Bayesian Partition Models for Robot Topological Mapping
Authors:
Ananth Ranganathan,
Frank Dellaert
Abstract:
Robotic mapping involves finding a solution to the correspondence problem. A general purpose solution to this
problem is as yet unavailable due to the combinatorial nature of the state space. We present a framework for
computing the posterior distribution over the space of topological maps that solves the correspondence problem
in the context of topological mapping. Since exact inference in this space is intractable, we present two sampling
algorithms that compute sample-based representations of the posterior. Both the algorithms are built on a Bayesian
product partition model that is derived from the mixture of Dirichlet processes model. Robot experiments demonstrate
the applicability of the algorithms.
Keywords:
Topological mapping, sample-based inference, partition models, markov chain monte carlo, sequential importance sampling
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