English

Learning Visual Feature-Based World Models via Residual Latent Action

Computer Vision and Pattern Recognition 2026-05-11 v1 Artificial Intelligence Machine Learning Robotics

Abstract

World models predict future transitions from observations and actions. Existing works predominantly focus on image generation only. Visual feature-based world models, on the other hand, predict future visual features instead of raw video pixels, offering a promising alternative that is more efficient and less prone to hallucination. However, current feature-based approaches rely on direct regression, which leads to blurry or collapsed predictions in complex interactions, while generative modeling in high-dimensional feature spaces still remains challenging. In this work, we discover that a new type of latent action representation, which we refer to as *Residual Latent Action* (RLA), can be easily learned from DINO residuals. We also show that RLA is predictive, generalizable, and encodes temporal progression. Building on RLA, we propose *RLA World Model* (RLA-WM), which predicts RLA values via flow matching. RLA-WM outperforms both state-of-the-art feature-based and video-diffusion world models on simulation and real-world datasets, while being orders of magnitude faster than video diffusion. Furthermore, we develop two robot learning techniques that use RLA-WM to improve policy learning. The first one is a minimalist world action model with RLA that learns from actionless demonstration videos. The second one is the first visual RL framework trained entirely inside a world model learned from offline videos only, using a video-aligned reward and no online interactions or handcrafted rewards. Project page: https://mlzxy.github.io/rla-wm

Keywords

Cite

@article{arxiv.2605.07079,
  title  = {Learning Visual Feature-Based World Models via Residual Latent Action},
  author = {Xinyu Zhang and Zhengtong Xu and Yutian Tao and Yeping Wang and Yu She and Abdeslam Boularias},
  journal= {arXiv preprint arXiv:2605.07079},
  year   = {2026}
}
R2 v1 2026-07-01T12:56:36.741Z