Efficient Non-Myopic Layered Bayesian Optimization For Large-Scale Bathymetric Informative Path Planning
Informative path planning (IPP) applied to bathymetric mapping allows AUVs to focus on feature-rich areas to quickly reduce uncertainty and increase mapping efficiency. Existing methods based on Bayesian optimization (BO) over Gaussian Process (GP) maps work well on small scenarios but they are shor...
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Zusammenfassung: | Informative path planning (IPP) applied to bathymetric mapping allows AUVs to
focus on feature-rich areas to quickly reduce uncertainty and increase mapping
efficiency. Existing methods based on Bayesian optimization (BO) over Gaussian
Process (GP) maps work well on small scenarios but they are short-sighted and
computationally heavy when mapping larger areas, hindering deployment in real
applications. To overcome this, we present a 2-layered BO IPP method that
performs non-myopic, real-time planning in a tree search fashion over large
Stochastic Variational GP maps, while respecting the AUV motion constraints and
accounting for localization uncertainty. Our framework outperforms the standard
industrial lawn-mowing pattern and a myopic baseline in a set of hardware in
the loop (HIL) experiments in an embedded platform over real bathymetry. |
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DOI: | 10.48550/arxiv.2410.15720 |