摘要
In the testing and validation of autonomous driving systems, scenario-based simulation is crucial to address the high costs and insufficient scene coverage of real-road testing. However, existing simulators rely on handcrafted rules to generate traffic scenarios, failing to capture the complexity of multi-agent interactions and physical rationality in real traffic. This paper proposes STGT-Gen, a data-driven Spatio-Temporal Graph Transformer framework, to generate realistic and diverse multi-vehicle traffic scenarios by integrating spatio-temporal interaction modeling, physical constraints, and high-definition (HD) map information.STGT-Gen adopts an encoder-decoder architecture: The encoder captures temporal dependencies of vehicle trajectories and spatial interactions via a Temporal Transformer and a Spatial Graph Transformer, respectively, while a hierarchical map encoding module fuses lane topologies and traffic rules. The decoder ensures physical feasibility during long-term trajectory generation through the Separating Axis Theorem (SAT) for collision detection and dynamic constraints (acceleration and steering angle limits). Experiments on real-world rounD and highD traffic datasets show that compared with the LSTM baseline model and recent Transformer-based methods, STGT-Gen achieves three-dimensional optimization: the Average Displacement Error (ADE) is reduced by 34.6%-40.7% compared to LSTM and by 12.3%-18.5% compared to Transformer baselines, the collision rate decreases by 62%, and the lane deviation rate drops by 81%. These results significantly enhance the trajectory accuracy, physical safety, and map compliance of generated scenarios, providing an efficient solution for high-fidelity scenario testing of autonomous driving systems.
| 源语言 | 英语 |
|---|---|
| 期刊 | SAE Technical Papers |
| DOI | |
| 出版状态 | 已出版 - 31 12月 2025 |
| 活动 | SAE 2025 Intelligent and Connected Vehicles Symposium, ICVS 2025 - Shanghai, 中国 期限: 19 9月 2025 → 19 9月 2025 |
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