ARES: Text-Driven Automatic Realistic Simulator for Autonomous Traffic

摘要

The large-scale generation of real-world scenario datasets is a pivotal task in the field of autonomous driving. Existing methods emphasize solely on single-frame rendering, which need complex inputs for continuous scenario rendering. In this letter, ARES:a text-driven automatic realistic simulator is proposed, which can generate extensive realistic datasets with just a single text input. Its core idea is to generate vehicle trajectories based on the textual description, and then render the scenario by vehicle attributes associated with these trajectories. For learning trajectories generating, supervisory signal temporal logic is proposed to assist conditional diffusion model, which incorporates prior physical information. We annotate textual descriptions for KITTI-MOT dataset and establish an objective quantitative evaluation system. The superiority of our method is demonstrated by its high performance, which is reflected in a matching score of 3.54 and an FID of 8.93in the trajectory reconstruction task, along with a speed accuracy of 0.99 and a direction accuracy of 0.93in the trajectory editing task. The scenarios rendered by the proposed method exhibit high quality and realism, which indicates its great potential in testing of autonomous driving algorithms with vehicle-in-the-loop simulations.

出版物
In IEEE Signal Processing Letters
Jinghao Cao(曹靖豪)
Jinghao Cao(曹靖豪)
博士(2022-)

简略介绍

Sheng Liu(刘晟)
Sheng Liu(刘晟)
硕博连读(2021-)

简略介绍

Xiong Yang(杨雄)
Xiong Yang(杨雄)
硕士(2022-)

简略介绍

Yang Li(李杨)
Yang Li(李杨)
副教授

简略介绍

Sidan Du(都思丹)
Sidan Du(都思丹)
教授

简略介绍