Maneuver Decision-Making with Trajectory Streams Prediction for Autonomous Vehicles
Mais Jamal, Aleksandr Panov

TL;DR
This paper introduces FFStreams++, a novel decision-making and motion planning approach for autonomous vehicles that combines trajectory prediction, sampling, and heuristic search to execute complex maneuvers safely in dynamic environments.
Contribution
The paper presents FFStreams++, integrating trajectory streams prediction with a combined sampling and search-based planning framework for diverse maneuvers.
Findings
Effective maneuver execution in simulation scenarios
Reduced collision risk with surrounding traffic
Improved decision-making in complex driving environments
Abstract
Decision-making, motion planning, and trajectory prediction are crucial in autonomous driving systems. By accurately forecasting the movements of other road users, the decision-making capabilities of the autonomous system can be enhanced, making it more effective in responding to dynamic and unpredictable environments and more adaptive to diverse road scenarios. This paper presents the FFStreams++ approach for decision-making and motion planning of different maneuvers, including unprotected left turn, overtaking, and keep-lane. FFStreams++ is a combination of sampling-based and search-based approaches, where iteratively new sampled trajectories for different maneuvers are generated and optimized, and afterward, a heuristic search planner is called, searching for an optimal plan. We model the autonomous diving system in the Planning Domain Definition Language (PDDL) and search for the…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic Prediction and Management Techniques · Traffic control and management
