A Hough transform approach to safety-aware scalar field mapping using Gaussian Processes
arXiv cs.RO / 4/23/2026
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Key Points
- The paper proposes a framework for an autonomous robot to map an unknown scalar field in unsafe environments while avoiding regions where the field exceeds a safety threshold.
- It models the scalar field as a Gaussian Process to enable Bayesian inference, yielding closed-form predictions for both the mean and uncertainty.
- The spatial structure of high-intensity (unsafe) regions is estimated online in parallel using the Hough Transform, informed by the evolving GP posterior.
- A probabilistic safe sampling strategy is used to select measurement locations with safety guarantees under the evolving GP model, and the detected unsafe regions also support safe motion planning.
- The approach is validated via two numerical simulations and an indoor experiment mapping a light-intensity field with a wheeled mobile robot.
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