English

Collision Probabilities for Continuous-Time Systems Without Sampling [with Appendices]

Robotics 2022-12-27 v2 Optimization and Control

Abstract

Demand for high-performance, robust, and safe autonomous systems has grown substantially in recent years. These objectives motivate the desire for efficient safety-theoretic reasoning that can be embedded in core decision-making tasks such as motion planning, particularly in constrained environments. On one hand, Monte-Carlo (MC) and other sampling-based techniques provide accurate collision probability estimates for a wide variety of motion models but are cumbersome in the context of continuous optimization. On the other, "direct" approximations aim to compute (or upper-bound) the failure probability as a smooth function of the decision variables, and thus are convenient for optimization. However, existing direct approaches fundamentally assume discrete-time dynamics and can perform unpredictably when applied to continuous-time systems ubiquitous in the real world, often manifesting as severe conservatism. State-of-the-art attempts to address this within a conventional discrete-time framework require additional Gaussianity approximations that ultimately produce inconsistency of their own. In this paper we take a fundamentally different approach, deriving a risk approximation framework directly in continuous time and producing a lightweight estimate that actually converges as the underlying discretization is refined. Our approximation is shown to significantly outperform state-of-the-art techniques in replicating the MC estimate while maintaining the functional and computational benefits of a direct method. This enables robust, risk-aware, continuous motion-planning for a broad class of nonlinear and/or partially-observable systems.

Keywords

Cite

@article{arxiv.2006.01109,
  title  = {Collision Probabilities for Continuous-Time Systems Without Sampling [with Appendices]},
  author = {Kristoffer M. Frey and Ted J. Steiner and Jonathan P. How},
  journal= {arXiv preprint arXiv:2006.01109},
  year   = {2022}
}

Comments

Presented at RSS 2020. Updated version contains restructured proofs and analysis, as well as as a number of notational tweaks throughout

R2 v1 2026-06-23T15:58:10.046Z