ITSC 2021-Sampling-Based Optimal Trajectory Generation for Autonomous Vehicles Using Reachable Sets

TUM Cyber-Physical Systems
TUM Cyber-Physical Systems
422 بار بازدید - 3 سال پیش - The talk was presented during
The talk was presented during the IEEE International Conference on Intelligent Transportation Systems 2021 (IEEE ITSC): "Sampling-Based Optimal Trajectory Generation for Autonomous Vehicles Using Reachable Sets" (https://mediatum.ub.tum.de/node?id=1616878) Abstract - Motion planners for autonomous vehicles must obtain feasible trajectories in real-time regardless of the complexity of traffic conditions. Planning approaches that discretize the search space may perform sufficiently in general driving situations, however, they inherently struggle in critical situations with small solution spaces. To address this problem, we prune the search space of a sampling-based motion planner using reachable sets, i.e., sets of states that the ego vehicle can reach without collision. By only creating samples within the collision-free reachable sets, we can drastically reduce the number of required samples and thus the computation time of the planner to find a feasible trajectory, especially in critical situations. The benefits of our novel concept are demonstrated using scenarios from the CommonRoad benchmark suite. Contact: [email protected]
3 سال پیش در تاریخ 1400/09/02 منتشر شده است.
422 بـار بازدید شده
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