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World Models Can Leverage Human Videos for Dexterous Manipulation

Published: December 15, 2025 | arXiv ID: 2512.13644v1

By: Raktim Gautam Goswami , Amir Bar , David Fan and more

Potential Business Impact:

Teaches robots to move hands skillfully like humans.

Business Areas:
Motion Capture Media and Entertainment, Video

Dexterous manipulation is challenging because it requires understanding how subtle hand motion influences the environment through contact with objects. We introduce DexWM, a Dexterous Manipulation World Model that predicts the next latent state of the environment conditioned on past states and dexterous actions. To overcome the scarcity of dexterous manipulation datasets, DexWM is trained on over 900 hours of human and non-dexterous robot videos. To enable fine-grained dexterity, we find that predicting visual features alone is insufficient; therefore, we introduce an auxiliary hand consistency loss that enforces accurate hand configurations. DexWM outperforms prior world models conditioned on text, navigation, and full-body actions, achieving more accurate predictions of future states. DexWM also demonstrates strong zero-shot generalization to unseen manipulation skills when deployed on a Franka Panda arm equipped with an Allegro gripper, outperforming Diffusion Policy by over 50% on average in grasping, placing, and reaching tasks.

Page Count
22 pages

Category
Computer Science:
Robotics