AI Agents 相关度: 8/10

Drive My Way: Preference Alignment of Vision-Language-Action Model for Personalized Driving

Zehao Wang, Huaide Jiang, Shuaiwu Dong, Yuping Wang, Hang Qiu, Jiachen Li
arXiv: 2603.25740v1 发布: 2026-03-26 更新: 2026-03-26

AI 摘要

DMW框架通过用户嵌入和语言指令,实现个性化自动驾驶,模拟个人驾驶习惯和适应实时指令。

主要贡献

  • 提出了Drive My Way (DMW)个性化驾驶框架
  • 设计了用户嵌入学习个人驾驶风格
  • 通过语言指令实现实时意图引导
  • 在Bench2Drive上验证了DMW的有效性

方法论

DMW通过收集多位驾驶员的数据学习用户嵌入,将该嵌入用于策略规划,并结合自然语言指令进行个性化驾驶。

原文摘要

Human driving behavior is inherently personal, which is shaped by long-term habits and influenced by short-term intentions. Individuals differ in how they accelerate, brake, merge, yield, and overtake across diverse situations. However, existing end-to-end autonomous driving systems either optimize for generic objectives or rely on fixed driving modes, lacking the ability to adapt to individual preferences or interpret natural language intent. To address this gap, we propose Drive My Way (DMW), a personalized Vision-Language-Action (VLA) driving framework that aligns with users' long-term driving habits and adapts to real-time user instructions. DMW learns a user embedding from our personalized driving dataset collected across multiple real drivers and conditions the policy on this embedding during planning, while natural language instructions provide additional short-term guidance. Closed-loop evaluation on the Bench2Drive benchmark demonstrates that DMW improves style instruction adaptation, and user studies show that its generated behaviors are recognizable as each driver's own style, highlighting personalization as a key capability for human-centered autonomous driving. Our data and code are available at https://dmw-cvpr.github.io/.

标签

自动驾驶 个性化 视觉语言 强化学习 用户建模

arXiv 分类

cs.RO cs.AI cs.CV cs.LG cs.MA