World Model for Robot Learning: A Comprehensive Survey
Abstract
World models, which are predictive representations of how environments evolve under actions, have become a central component of robot learning. They support policy learning, planning, simulation, evaluation, data generation, and have advanced rapidly with the rise of foundation models and large-scale video generation. However, the literature remains fragmented across architectures, functional roles, and embodied application domains. To address this gap, we present a comprehensive review of world models from a robot-learning perspective. We examine how world models are coupled with robot policies, how they serve as learned simulators for reinforcement learning and evaluation, and how robotic video world models have progressed from imagination-based generation to controllable, structured, and foundation-scale formulations. We further connect these ideas to navigation and autonomous driving, and summarize representative datasets, benchmarks, and evaluation protocols. Overall, this survey systematically reviews the rapidly growing literature on world models for robot learning, clarifies key paradigms and applications, and highlights major challenges and future directions for predictive modeling in embodied agents. To facilitate continued access to newly emerging works, benchmarks, and resources, we will maintain and regularly update the accompanying GitHub repository alongside this survey.
Keywords
Cite
@article{arxiv.2605.00080,
title = {World Model for Robot Learning: A Comprehensive Survey},
author = {Bohan Hou and Gen Li and Jindou Jia and Tuo An and Xinying Guo and Sicong Leng and Haoran Geng and Yanjie Ze and Tatsuya Harada and Philip Torr and Oier Mees and Marc Pollefeys and Zhuang Liu and Jiajun Wu and Pieter Abbeel and Jitendra Malik and Yilun Du and Jianfei Yang},
journal= {arXiv preprint arXiv:2605.00080},
year = {2026}
}
Comments
43 pages, 6 figures