One-Forcing: Towards Stable One-Step Autoregressive Video Generation
Summary
One-Forcing improves one-step video generation by augmenting the DMD objective with an auxiliary GAN loss, achieving state-of-the-art performance with reduced training costs.
View Cached Full Text
Cached at: 06/01/26, 07:21 PM
Paper page - One-Forcing: Towards Stable One-Step Autoregressive Video Generation
Source: https://huggingface.co/papers/2605.23458
Abstract
One-Forcing improves one-step video generation quality and efficiency by combining DMD objective with GAN loss, achieving state-of-the-art results with reduced training costs.
Recent advances have substantially improved real-time interactive video generation in the autoregressive regime. However, most existing few-stepautoregressive video generationmethods, often distilled from a corresponding many-step teacher, default to a 4-step sampling configuration, which still incurs considerable latency during deployment and suffers from severe quality degradation when the number of sampling steps is further reduced, particularly in the one-step setting.Trajectory-style consistency distillationmethods often produce videos with weak dynamics, whileDMD-based approaches, such asSelf-Forcing, tend to yield blurry frames. To address this challenge, we propose One-Forcing, a simple yet effective approach which augments the DMD objective with an auxiliaryGAN lossfor high-quality and efficientone-step video generation. Experiments on VBench show that One-Forcing achieves a total score of 83.76, establishing state-of-the-art performance among one-stepcausal video generationmethods and remaining competitive with strong many-step approaches. We further demonstrate that one-step framewise autoregressive generation can be achieved stably with merely one-third of the training cost of thechunkwise model, a setting that prior methods have failed to achieve successfully.
View arXiv pageView PDFProject pageGitHub30Add to collection
Get this paper in your agent:
hf papers read 2605\.23458
Don’t have the latest CLI?curl \-LsSf https://hf\.co/cli/install\.sh \| bash
Models citing this paper0
No model linking this paper
Cite arxiv.org/abs/2605.23458 in a model README.md to link it from this page.
Datasets citing this paper0
No dataset linking this paper
Cite arxiv.org/abs/2605.23458 in a dataset README.md to link it from this page.
Spaces citing this paper0
No Space linking this paper
Cite arxiv.org/abs/2605.23458 in a Space README.md to link it from this page.
Collections including this paper0
No Collection including this paper
Add this paper to acollectionto link it from this page.
Similar Articles
AAD-1: Asymmetric Adversarial Distillation for One-Step Autoregressive Video Generation
AAD-1 introduces asymmetric adversarial distillation with phased training to achieve one-step autoregressive video generation, outperforming prior methods on VBench.
Causal Forcing++: Scalable Few-Step Autoregressive Diffusion Distillation for Real-Time Interactive Video Generation
Causal Forcing++ presents a novel causal consistency distillation method for frame-wise autoregressive video generation, achieving state-of-the-art quality with reduced latency and training cost.
Next Forcing: Causal World Modeling with Multi-Chunk Prediction
Next Forcing introduces a multi-chunk prediction framework for causal world modeling that accelerates training and inference for autoregressive video generation while improving accuracy and physical law adherence.
On-Policy Adversarial Flow Distillation for Autoregressive Video Generation
Proposes Adversarial Flow Distillation (AFD) for distilling heterogeneous black-box video generation models into autoregressive students, using on-policy feedback and forward-process flow-matching updates.
Streaming Video Generation with Streaming Force Control
StreamForce is a causal, unified video generation model that provides real-time, physically grounded responses to time-varying forces through a distillation pipeline and autoregressive architecture, achieving state-of-the-art performance in force adherence and motion realism.