DreamDojo: A Generalist Robot World Model from Large-Scale Human Videos

arXiv:2602.06949v139 citationsh-index: 21
Originality Incremental advance
AI Analysis

This work addresses the problem of limited data and action labels for generalist robot agents, enabling applications like teleoperation and planning, though it is incremental in scaling up video-based pretraining.

The authors tackled the challenge of simulating world dynamics for dexterous robotics by introducing DreamDojo, a foundation world model trained on 44k hours of human videos, which achieved real-time speed of 10.81 FPS and strong performance on out-of-distribution benchmarks.

Being able to simulate the outcomes of actions in varied environments will revolutionize the development of generalist agents at scale. However, modeling these world dynamics, especially for dexterous robotics tasks, poses significant challenges due to limited data coverage and scarce action labels. As an endeavor towards this end, we introduce DreamDojo, a foundation world model that learns diverse interactions and dexterous controls from 44k hours of egocentric human videos. Our data mixture represents the largest video dataset to date for world model pretraining, spanning a wide range of daily scenarios with diverse objects and skills. To address the scarcity of action labels, we introduce continuous latent actions as unified proxy actions, enhancing interaction knowledge transfer from unlabeled videos. After post-training on small-scale target robot data, DreamDojo demonstrates a strong understanding of physics and precise action controllability. We also devise a distillation pipeline that accelerates DreamDojo to a real-time speed of 10.81 FPS and further improves context consistency. Our work enables several important applications based on generative world models, including live teleoperation, policy evaluation, and model-based planning. Systematic evaluation on multiple challenging out-of-distribution (OOD) benchmarks verifies the significance of our method for simulating open-world, contact-rich tasks, paving the way for general-purpose robot world models.

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