A Frame is Worth One Token: Efficient Generative World Modeling with Delta Tokens
About
Anticipating diverse future states is a central challenge in video world modeling. Discriminative world models produce a deterministic prediction that implicitly averages over possible futures, while existing generative world models remain computationally expensive. Recent work demonstrates that predicting the future in the feature space of a vision foundation model (VFM), rather than a latent space optimized for pixel reconstruction, requires significantly fewer world model parameters. However, most such approaches remain discriminative. In this work, we introduce DeltaTok, a tokenizer that encodes the VFM feature difference between consecutive frames into a single continuous "delta" token, and DeltaWorld, a generative world model operating on these tokens to efficiently generate diverse plausible futures. Delta tokens reduce video from a three-dimensional spatio-temporal representation to a one-dimensional temporal sequence, for example yielding a 1,024x token reduction with 512x512 frames. This compact representation enables tractable multi-hypothesis training, where many futures are generated in parallel and only the best is supervised. At inference, this leads to diverse predictions in a single forward pass. Experiments on dense forecasting tasks demonstrate that DeltaWorld forecasts futures that more closely align with real-world outcomes, while having over 35x fewer parameters and using 2,000x fewer FLOPs than existing generative world models. Code and weights: https://deltatok.github.io.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Dense Forecasting | VSPW Short horizon, ~0.2s | mIoU (best-of-20)55.4 | 6 | |
| Dense Forecasting | VSPW Mid horizon, ~0.6s | mIoU (Best-20)50.1 | 6 | |
| Dense Forecasting | Cityscapes Short horizon, ~0.2s | mIoU (best-of-20)65.8 | 6 | |
| Dense Forecasting | Cityscapes Mid horizon, ~0.6s | mIoU (best-of-20)55.4 | 6 | |
| Dense Forecasting | KITTI Short horizon, ~0.2s | RMSE (best-of-20)3 | 6 | |
| Dense Forecasting | KITTI Mid horizon, ~0.6s | RMSE (best-of-20)3.88 | 6 |