2022
DOI: 10.48550/arxiv.2209.08401
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Nonlinear Heterogeneous Bayesian Decentralized Data Fusion

Abstract: In multi-robot applications, inference over large state spaces can often be divided into smaller overlapping subproblems that can then be collaboratively solved in parallel over 'separate' subsets of states. To this end, the factor graph decentralized data fusion (FG-DDF) framework was developed to analyze and exploit conditional independence in heterogeneous Bayesian decentralized fusion problems, in which robots update and fuse pdfs over different locally overlapping random states. This allows robots to effi… Show more

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