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Guaranteed Rejection-free Sampling Method Using Past Behaviours for Motion Planning of Autonomous Systems

Abstract

The paper presents a novel learning-based sampling strategy that guarantees rejection-free sampling of the free space under both biased and approximately uniform conditions, leveraging multivariate kernel densities. Historical data from a given autonomous system is leveraged to estimate a non-parametric probabilistic description of the domain, which also describes the free space where feasible solutions of the motion planning problem are likely to be found. The tuning parameters of the kernel density estimator, the bandwidth and the kernel, are used to alter the description of the free space so that no samples can fall outside the originally definedthis http URLproposed method is demonstrated in two real-life case studies: An autonomous surface vessel (2D) and an autonomous drone (3D). Two planning problems are solved, showing that the proposed approximately uniform sampling scheme is capable of guaranteeing rejection-free samples of the considered workspace. Furthermore, the effectiveness of the proposed method is statistically validated using Monte Carlo simulations.

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@article{enevoldsen2025_2109.14687,
  title={ Guaranteed Rejection-free Sampling Method Using Past Behaviours for Motion Planning of Autonomous Systems },
  author={ Thomas T. Enevoldsen and Roberto Galeazzi },
  journal={arXiv preprint arXiv:2109.14687},
  year={ 2025 }
}
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