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Speed Planning Using Bezier Polynomials with Trapezoidal Corridors

2021-04-23 15:09:49
Jialun Li, Xiaojia Xie, Hengbo Ma, Xiao Liu, Jianping He

Abstract

To generate safe and real-time trajectories for an autonomous vehicle in dynamic environments, path and speed decoupled planning methods are often considered. This paper studies speed planning, which mainly deals with dynamic obstacle avoidance given the planning path. The main challenges lie in the decisions in non-convex space and the trade-off between safety, comfort and efficiency performances. This work uses dynamic programming to search heuristic waypoints on the S-T graph and to construct convex feasible spaces. Further, a piecewise Bezier polynomials optimization approach with trapezoidal corridors is presented, which theoretically guarantees the safety and optimality of the trajectory. The simulations verify the effectiveness of the proposed approach.

Abstract (translated)

URL

https://arxiv.org/abs/2104.11655

PDF

https://arxiv.org/pdf/2104.11655.pdf


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