AI RESEARCH

DriveVA: Video Action Models are Zero-Shot Drivers

arXiv CS.CV

ArXi:2604.04198v1 Announce Type: new Generalization is a central challenge in autonomous driving, as real-world deployment requires robust performance under unseen scenarios, sensor domains, and environmental conditions. Recent world-model-based planning methods have shown strong capabilities in scene understanding and multi-modal future prediction, yet their generalization across datasets and sensor configurations remains limited. In addition, their loosely coupled planning paradigm often leads to poor video-trajectory consistency during visual imagination.