Infinite Worlds with Versatile Interactions
Researchers have introduced a video-action pretraining framework specifically designed for physical robotic environments rather than digital content generation. By training models directly on robotic sensor data, this approach aims to improve the adaptability of control systems across various physical tasks.
Covered by 2 sources · 5 articles
- MMarkTechPost↗Asif Razzaq6h ago
- AarXiv CS.AI↗Utkarsh A. Mishra, Yongxin Chen, Danfei Xu, Yang Liu, Xi Chen, Jiayuan Mao1d ago
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