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Announcing Diffusion Forcing Transformer (DFoT), our new video diffusion algorithm that generates ultra-long videos of 800+ frames. DFoT enables History Guidance, a simple add-on to any existing video diffusion models for a quality boost. Website: (1/7)
175,996 просмотров • 1 год назад •via X (Twitter)
Комментарии: 8

Classifier-free Guidance (CFG) has been widely used by video diffusion models to boost sample quality. However, researchers rarely perform CFG beyond the first frame. Our paper finds that an equally important conditioning variable, the history, is the long-ignored key. (2/7)

Can we train a single model to perform conditional diffusion with different portions of history - variable lengths, subsets of frames, and even different image-domain frequencies? Introducing DFoT, a simple yet flexible add-on that requires no architectural changes. (3/7)

Unlike previous methods, DFoT views history or target alike as tokens of different noise levels. DFoT trains diffusion with varying noise levels per frame. To conditionally sample, one simply masks out a portion of history with noise before computing the diffusion score. (4/7)

DFoT enables History Guidance (HG), a family of history-conditioned guidance methods that composes diffusion scores from different histories. From its simplest form to its most advanced variant, HG significantly enhances video diffusion and unlocks new abilities. (5/7)

We show that DFoT alone is already a competitive model, matching or beating industry SOTA with way more compute than us. Together with HG, it can stably rollout very long videos, stay robust to out-of-distribution context, and stitch sub-trajectories (6/7)

For more information, please visit our paper and project website and. Shout out to my awesome collaborators @kiwhansong0, @du_yilun, @max_simchowitz, @RussTedrake and @vincesitzmann (7/7)

Here's a simple strategy to churn out 100s of viral videos (we’ve done 40 Million views in the past 3 weeks using this exact framework) 🧵

Great!
