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.

Abstract

Efficient and robust path planning hinges on combining all accessible information sources. In particular, the task of path planning for robotic environmental exploration and monitoring depends highly on the current belief of the world. To capture the uncertainty in the belief, we present a Gaussian process based path planning method that adapts to multi-modal environmental sensing data and incorporates state and input constraints. To solve the path planning problem, we optimize over future waypoints in a receding horizon fashion, and our cost is thus a function of the Gaussian process posterior over all these waypoints. We demonstrate this method, dubbed OLAhGP, on an autonomous surface vessel using oceanic algal bloom data from both a high-fidelity model and in-situ sensing data in a monitoring scenario. Our simulated and experimental results demonstrate significant improvement over existing methods. With the same number of samples, our method generates more informative paths and achieves greater accuracy in identifying algal blooms in chlorophyll a rich waters, measured with respect to total misclassification probability and binary misclassification rate over the domain of interest.