Decision-making and Planning Framework with Prediction-Guided Strategy Tree Search Algorithm for Uncontrolled Intersections

2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC)(2022)

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摘要
Uncontrolled intersections are important and challenging traffic scenarios for autonomous vehicles. Vehicles not only need to avoid collisions with dynamic vehicles instantaneously but also predict their behavior then make long-term decisions in reaction. To solve this problem, we propose a cooperative framework composed of a Primary Driver (PD) for motion planning and a Subordinate Driver (SD) for decision-making. SD is essentially the combination of a prediction module and a high-level behavior planner, which develops a prediction-guided strategy tree to determine the optimal action sequence. Especially, under the guidance of the prediction results, the tree branches are evaluated in security metrics, then get trimmed in action and observation space to reduce the dimensional complexity. With the assistance of SD, PD works as a collision checker and a low-level motion planner to generate a safe and smooth trajectory. We use the INTERACTION dataset to validate our method and achieve more than 90% success rate with efficiency improvement in various situations.
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关键词
decision-making,planning framework,prediction-guided strategy tree search algorithm,uncontrolled intersections,challenging traffic scenarios,autonomous vehicles,dynamic vehicles,long-term decisions,Primary Driver,PD,motion planning,Subordinate Driver,SD,prediction module,high-level behavior planner,optimal action sequence,tree branches,observation space,collision checker,low-level motion planner
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