Multi-Step Gaussian Process Propagation for Adaptive Path Planning
arXiv cs.RO / 4/22/2026
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Key Points
- The paper introduces OLAhGP, a Gaussian-process-based adaptive path planning method that represents the robot’s world belief while handling uncertainty from multi-modal environmental sensing.
- It formulates planning as an optimization over future waypoints using a receding-horizon approach, where the cost depends on the Gaussian process posterior across those candidate waypoints.
- The method explicitly incorporates state and input constraints, aiming for robust and feasible trajectories under realistic operating limits.
- Experiments on an autonomous surface vessel using ocean algal bloom data from both high-fidelity models and in-situ sensors show improved performance versus existing approaches, using misclassification-focused metrics.
- Overall, OLAhGP generates more informative paths and improves accuracy in detecting algal blooms in chlorophyll-a-rich waters, based on reduced total misclassification probability and binary misclassification rate.
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