AI RESEARCH
Kinematics-Aware Latent World Models for Data-Efficient Autonomous Driving
arXiv CS.AI
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ArXi:2603.07264v1 Announce Type: cross Data-efficient learning remains a central challenge in autonomous driving due to the high cost and safety risks of large-scale real-world interaction. Although world-model-based reinforcement learning enables policy optimization through latent imagination, existing approaches often lack explicit mechanisms to encode spatial and kinematic structure essential for driving tasks. In this work, we build upon the Recurrent State-Space Model (RSSM) and propose a kinematics-aware latent world model framework for autonomous driving.