An Efficient Game-Theoretic Planner for Automated Lane Merging with
Multi-Modal Behavior Understanding
IEEE Transactions on Control Systems Technology (IEEE TCST), 2023
Abstract
In this paper, we propose a novel behavior planner that combines game theory with search-based planning for automated lane merging. Specifically, inspired by human drivers, we model the interaction between vehicles as a gap selection process. To overcome the challenge of multi-modal behavior exhibited by the surrounding vehicles, we formulate the trajectory selection as a matrix game and compute an equilibrium. Next, we validate our proposed planner in the high-fidelity simulator CARLA and demonstrate its effectiveness in handling interactions in dense traffic scenarios.
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