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Humanoid World Models: Open World Foundation Models for Humanoid Robotics

Published: June 1, 2025 | arXiv ID: 2506.01182v2

By: Muhammad Qasim Ali , Aditya Sridhar , Shahbuland Matiana and more

Potential Business Impact:

Robots learn to predict and plan actions.

Business Areas:
Virtual World Community and Lifestyle, Media and Entertainment, Software

Humanoid robots, with their human-like form, are uniquely suited for interacting in environments built for people. However, enabling humanoids to reason, plan, and act in complex open-world settings remains a challenge. World models, models that predict the future outcome of a given action, can support these capabilities by serving as a dynamics model in long-horizon planning and generating synthetic data for policy learning. We introduce Humanoid World Models (HWM), a family of lightweight, open-source models that forecast future egocentric video conditioned on humanoid control tokens. We train two types of generative models, Masked Transformers and Flow-Matching, on 100 hours of humanoid demonstrations. Additionally, we explore architectural variants with different attention mechanisms and parameter-sharing strategies. Our parameter-sharing techniques reduce model size by 33-53% with minimal impact on performance or visual fidelity. HWMs are designed to be trained and deployed in practical academic and small-lab settings, such as 1-2 GPUs.

Country of Origin
🇨🇦 Canada

Page Count
12 pages

Category
Computer Science:
Robotics