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Main Authors: Wu, Yuheng, Gao, Xiangbo, Chen, Tianhao, Chen, Xinghao, Yin, Qing, Tu, Zhengzhong, Lee, Dongman
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.14382
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author Wu, Yuheng
Gao, Xiangbo
Chen, Tianhao
Chen, Xinghao
Yin, Qing
Tu, Zhengzhong
Lee, Dongman
author_facet Wu, Yuheng
Gao, Xiangbo
Chen, Tianhao
Chen, Xinghao
Yin, Qing
Tu, Zhengzhong
Lee, Dongman
contents Interactive real-time autoregressive video generation is essential for applications such as content creation and world modeling, where visual content must adapt to dynamically evolving event conditions. A fundamental challenge lies in balancing reactivity and stability: models must respond promptly to new events while maintaining temporal coherence over long horizons. Existing approaches distill bidirectional models into autoregressive generators and further adapt them via streaming long tuning, yet often exhibit persistent drift after condition changes. We identify the cause as conditional bias, where the teacher may provide condition-aligned but trajectory-agnostic guidance, biasing generation toward locally valid yet globally inconsistent modes. Inspired by Trust Region Policy Optimization, we propose Delta Forcing, a simple yet effective framework that constrains unreliable teacher supervision within an adaptive trust region. Specifically, Delta Forcing estimates transition consistency from the latent delta between teacher and generator trajectories, and uses it to balance teacher supervision with a monotonic continuity objective. This suppress unreliable teacher-induced shifts while preserving responsiveness to new events. Extensive experiments demonstrate that Delta Forcing significantly improves consistency while maintaining event reactivity.
format Preprint
id arxiv_https___arxiv_org_abs_2605_14382
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Delta Forcing: Trust Region Steering for Interactive Autoregressive Video Generation
Wu, Yuheng
Gao, Xiangbo
Chen, Tianhao
Chen, Xinghao
Yin, Qing
Tu, Zhengzhong
Lee, Dongman
Computer Vision and Pattern Recognition
Graphics
Multimedia
Interactive real-time autoregressive video generation is essential for applications such as content creation and world modeling, where visual content must adapt to dynamically evolving event conditions. A fundamental challenge lies in balancing reactivity and stability: models must respond promptly to new events while maintaining temporal coherence over long horizons. Existing approaches distill bidirectional models into autoregressive generators and further adapt them via streaming long tuning, yet often exhibit persistent drift after condition changes. We identify the cause as conditional bias, where the teacher may provide condition-aligned but trajectory-agnostic guidance, biasing generation toward locally valid yet globally inconsistent modes. Inspired by Trust Region Policy Optimization, we propose Delta Forcing, a simple yet effective framework that constrains unreliable teacher supervision within an adaptive trust region. Specifically, Delta Forcing estimates transition consistency from the latent delta between teacher and generator trajectories, and uses it to balance teacher supervision with a monotonic continuity objective. This suppress unreliable teacher-induced shifts while preserving responsiveness to new events. Extensive experiments demonstrate that Delta Forcing significantly improves consistency while maintaining event reactivity.
title Delta Forcing: Trust Region Steering for Interactive Autoregressive Video Generation
topic Computer Vision and Pattern Recognition
Graphics
Multimedia
url https://arxiv.org/abs/2605.14382