Trajectory Planning for Autonomous Driving in Unstructured Scenarios Based on Graph Neural Network and Numerical Optimization
Sumin Zhang, Kuo Li, Rui He, Zhiwei Meng, Yupeng Chang, Xiaosong Jin,, Ri Bai

TL;DR
This paper introduces a two-stage trajectory planning approach for autonomous vehicles in unstructured environments, combining Graph Neural Networks for initial trajectory prediction with numerical optimization for refinement, improving efficiency and feasibility.
Contribution
It presents a novel GNN-based initial trajectory prediction combined with numerical optimization, simplifying the planning process in unstructured scenarios.
Findings
Improved planning efficiency compared to traditional methods
Validated feasibility through simulation experiments
Outperformed other mainstream planning algorithms
Abstract
In unstructured environments, obstacles are diverse and lack lane markings, making trajectory planning for intelligent vehicles a challenging task. Traditional trajectory planning methods typically involve multiple stages, including path planning, speed planning, and trajectory optimization. These methods require the manual design of numerous parameters for each stage, resulting in significant workload and computational burden. While end-to-end trajectory planning methods are simple and efficient, they often fail to ensure that the trajectory meets vehicle dynamics and obstacle avoidance constraints in unstructured scenarios. Therefore, this paper proposes a novel trajectory planning method based on Graph Neural Networks (GNN) and numerical optimization. The proposed method consists of two stages: (1) initial trajectory prediction using the GNN, (2) trajectory optimization using…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Robotic Path Planning Algorithms · Vehicle License Plate Recognition
