English

StateSpaceDiffuser: Bringing Long Context to Diffusion World Models

Computer Vision and Pattern Recognition 2025-11-03 v3

Abstract

World models have recently gained prominence for action-conditioned visual prediction in complex environments. However, relying on only a few recent observations causes them to lose long-term context. Consequently, within a few steps, the generated scenes drift from what was previously observed, undermining temporal coherence. This limitation, common in state-of-the-art world models, which are diffusion-based, stems from the lack of a lasting environment state. To address this problem, we introduce StateSpaceDiffuser, where a diffusion model is enabled to perform long-context tasks by integrating features from a state-space model, representing the entire interaction history. This design restores long-term memory while preserving the high-fidelity synthesis of diffusion models. To rigorously measure temporal consistency, we develop an evaluation protocol that probes a model's ability to reinstantiate seen content in extended rollouts. Comprehensive experiments show that StateSpaceDiffuser significantly outperforms a strong diffusion-only baseline, maintaining a coherent visual context for an order of magnitude more steps. It delivers consistent views in both a 2D maze navigation and a complex 3D environment. These results establish that bringing state-space representations into diffusion models is highly effective in demonstrating both visual details and long-term memory. Project page: https://insait-institute.github.io/StateSpaceDiffuser/.

Keywords

Cite

@article{arxiv.2505.22246,
  title  = {StateSpaceDiffuser: Bringing Long Context to Diffusion World Models},
  author = {Nedko Savov and Naser Kazemi and Deheng Zhang and Danda Pani Paudel and Xi Wang and Luc Van Gool},
  journal= {arXiv preprint arXiv:2505.22246},
  year   = {2025}
}
R2 v1 2026-07-01T02:46:06.813Z