Tight Collision Avoidance for Stochastic Optimal Control: with Applications in Learning-based, Interactive Motion Planning
By: Erik Börve, Nikolce Murgovski, Leo Laine
Potential Business Impact:
Helps self-driving cars safely navigate busy roads.
Trajectory planning in dense, interactive traffic scenarios presents significant challenges for autonomous vehicles, primarily due to the uncertainty of human driver behavior and the non-convex nature of collision avoidance constraints. This paper introduces a stochastic optimal control framework to address these issues simultaneously, without excessively conservative approximations. We opt to model human driver decisions as a Markov Decision Process and propose a method for handling collision avoidance between non-convex vehicle shapes by imposing a positive distance constraint between compact sets. In this framework, we investigate three alternative chance constraint formulations. To ensure computational tractability, we introduce tight, continuously differentiable reformulations of both the non-convex distance constraints and the chance constraints. The efficacy of our approach is demonstrated through simulation studies of two challenging interactive scenarios: an unregulated intersection crossing and a highway lane change in dense traffic.
Similar Papers
Real-Time Model Predictive Control of Vehicles with Convex-Polygon-Aware Collision Avoidance in Tight Spaces
Robotics
Helps cars park in tiny spots safely.
Path planning with moving obstacles using stochastic optimal control
Systems and Control
Helps robots avoid bumping into people.
Optimal Trajectory Planning with Collision Avoidance for Autonomous Vehicle Maneuvering
Systems and Control
Helps cars park themselves perfectly and safely.