Saved in:
Bibliographic Details
Main Authors: Wei, Yuxi, Wang, Jingbo, Du, Yuwen, Wang, Dingju, Pan, Liang, Xu, Chenxin, Feng, Yao, Dai, Bo, Chen, Siheng
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.08685
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915060586119168
author Wei, Yuxi
Wang, Jingbo
Du, Yuwen
Wang, Dingju
Pan, Liang
Xu, Chenxin
Feng, Yao
Dai, Bo
Chen, Siheng
author_facet Wei, Yuxi
Wang, Jingbo
Du, Yuwen
Wang, Dingju
Pan, Liang
Xu, Chenxin
Feng, Yao
Dai, Bo
Chen, Siheng
contents Generating realistic and interactive dynamics of traffic participants according to specific instruction is critical for street scene simulation. However, there is currently a lack of a comprehensive method that generates realistic dynamics of different types of participants including vehicles and pedestrians, with different kinds of interactions between them. In this paper, we introduce ChatDyn, the first system capable of generating interactive, controllable and realistic participant dynamics in street scenes based on language instructions. To achieve precise control through complex language, ChatDyn employs a multi-LLM-agent role-playing approach, which utilizes natural language inputs to plan the trajectories and behaviors for different traffic participants. To generate realistic fine-grained dynamics based on the planning, ChatDyn designs two novel executors: the PedExecutor, a unified multi-task executor that generates realistic pedestrian dynamics under different task plannings; and the VehExecutor, a physical transition-based policy that generates physically plausible vehicle dynamics. Extensive experiments show that ChatDyn can generate realistic driving scene dynamics with multiple vehicles and pedestrians, and significantly outperforms previous methods on subtasks. Code and model will be available at https://vfishc.github.io/chatdyn.
format Preprint
id arxiv_https___arxiv_org_abs_2412_08685
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ChatDyn: Language-Driven Multi-Actor Dynamics Generation in Street Scenes
Wei, Yuxi
Wang, Jingbo
Du, Yuwen
Wang, Dingju
Pan, Liang
Xu, Chenxin
Feng, Yao
Dai, Bo
Chen, Siheng
Computer Vision and Pattern Recognition
Generating realistic and interactive dynamics of traffic participants according to specific instruction is critical for street scene simulation. However, there is currently a lack of a comprehensive method that generates realistic dynamics of different types of participants including vehicles and pedestrians, with different kinds of interactions between them. In this paper, we introduce ChatDyn, the first system capable of generating interactive, controllable and realistic participant dynamics in street scenes based on language instructions. To achieve precise control through complex language, ChatDyn employs a multi-LLM-agent role-playing approach, which utilizes natural language inputs to plan the trajectories and behaviors for different traffic participants. To generate realistic fine-grained dynamics based on the planning, ChatDyn designs two novel executors: the PedExecutor, a unified multi-task executor that generates realistic pedestrian dynamics under different task plannings; and the VehExecutor, a physical transition-based policy that generates physically plausible vehicle dynamics. Extensive experiments show that ChatDyn can generate realistic driving scene dynamics with multiple vehicles and pedestrians, and significantly outperforms previous methods on subtasks. Code and model will be available at https://vfishc.github.io/chatdyn.
title ChatDyn: Language-Driven Multi-Actor Dynamics Generation in Street Scenes
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.08685