Aether: Geometric-Aware Unified World Modeling

50citations
arXiv:2503.18945
50
citations
#45
in ICCV 2025
of 2701 papers
10
Top Authors
8
Data Points

Abstract

The integration of geometric reconstruction and generative modeling remains a critical challenge in developing AI systems capable of human-like spatial reasoning. This paper proposes Aether, a unified framework that enables geometry-aware reasoning in world models by jointly optimizing three core capabilities: (1) 4D dynamic reconstruction, (2) action-conditioned video prediction, and (3) goal-conditioned visual planning. Through task-interleaved feature learning, Aether achieves synergistic knowledge sharing across reconstruction, prediction, and planning objectives. Building upon video generation models, our framework demonstrates zero-shot synthetic-to-real generalization despite never observing real-world data during training. Furthermore, our approach achieves zero-shot generalization in both action following and reconstruction tasks, thanks to its intrinsic geometric modeling. Notably, even without real-world data, its reconstruction performance is comparable with or even better than that of domain-specific models. Additionally, Aether employs camera trajectories as geometry-informed action spaces, enabling effective action-conditioned prediction and visual planning. We hope our work inspires the community to explore new frontiers in physically-reasonable world modeling and its applications.

Citation History

Jan 24, 2026
0
Jan 26, 2026
0
Jan 26, 2026
0
Jan 27, 2026
47+47
Feb 4, 2026
47
Feb 13, 2026
50+3
Feb 13, 2026
50
Feb 13, 2026
50