With the increasing integration of intelligent driving functions into serial-produced vehicles, ensuring their functionality and robustness poses greater challenges. Compared to traditional road testing, scenario-based virtual testing offers significant advantages in terms of time and cost efficiency, reproducibility, and exploration of edge cases. We propose a Transformer-enhanced Conditional Variational Autoencoder (CVAE-T) model for generating multi-agent traffic scenarios in roundabouts, which are characterized by high vehicle dynamics and complex layouts, yet remain relatively underexplored in current research. The results show that the proposed model can accurately reconstruct original scenarios and generate realistic, diverse synthetic scenarios. Besides, two Key-Performance-Indicators (KPIs) are employed to evaluate the interactive behavior in the generated scenarios. Analysis of the latent space reveals partial disentanglement, with several latent dimensions exhibiting distinct and interpretable effects on scenario attributes such as vehicle entry timing, exit timing, and velocity profiles. The results demonstrate the model's capability to generate scenarios for the validation of intelligent driving functions involving multi-agent interactions, as well as to augment data for their development and iterative improvement.
翻译:随着智能驾驶功能日益集成于量产车辆,确保其功能性与鲁棒性面临更大挑战。相较于传统道路测试,基于场景的虚拟测试在时间与成本效率、可重复性以及边缘案例探索方面具有显著优势。本文提出一种Transformer增强的条件变分自编码器(CVAE-T)模型,用于生成环岛环境中的多智能体交通场景。环岛场景具有高车辆动态性与复杂布局特征,但在当前研究中仍相对缺乏深入探索。结果表明,所提模型能够准确重构原始场景,并生成逼真且多样化的合成场景。此外,研究采用两个关键性能指标(KPI)评估生成场景中的交互行为。通过对潜在空间的分析,发现其存在部分解耦特性,其中若干潜在维度对车辆进入时机、驶离时机及速度曲线等场景属性表现出显著且可解释的影响。这些结果证明了该模型能够为涉及多智能体交互的智能驾驶功能验证生成场景,并为其开发与迭代优化提供数据增强支持。