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Main Authors: Cheng, Xianhang, Zheng, Yujian, Xie, Zhenyu, Liao, Tingting, Li, Hao
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.17825
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author Cheng, Xianhang
Zheng, Yujian
Xie, Zhenyu
Liao, Tingting
Li, Hao
author_facet Cheng, Xianhang
Zheng, Yujian
Xie, Zhenyu
Liao, Tingting
Li, Hao
contents Despite rapid progress in video diffusion transformers, how their internal model signals can be leveraged with minimal overhead to enhance video generation quality remains underexplored. In this work, we study the role of Massive Activations (MAs), which are rare, high-magnitude hidden state spikes in video diffusion transformers. We observed that MAs emerge consistently across all visual tokens, with a clear magnitude hierarchy: first-frame tokens exhibit the largest MA magnitudes, latent-frame boundary tokens (the head and tail portions of each temporal chunk in the latent space) show elevated but slightly lower MA magnitudes than the first frame, and interior tokens within each latent frame remain elevated, yet are comparatively moderate in magnitude. This structured pattern suggests that the model implicitly prioritizes token positions aligned with the temporal chunking in the latent space. Based on this observation, we propose Structured Activation Steering (STAS), a training-free self-guidance-like method that steers MA values at first-frame and boundary tokens toward a scaled global maximum reference magnitude. STAS achieves consistent improvements in terms of video quality and temporal coherence across different text-to-video models, while introducing negligible computational overhead.
format Preprint
id arxiv_https___arxiv_org_abs_2603_17825
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Steering Video Diffusion Transformers with Massive Activations
Cheng, Xianhang
Zheng, Yujian
Xie, Zhenyu
Liao, Tingting
Li, Hao
Computer Vision and Pattern Recognition
Despite rapid progress in video diffusion transformers, how their internal model signals can be leveraged with minimal overhead to enhance video generation quality remains underexplored. In this work, we study the role of Massive Activations (MAs), which are rare, high-magnitude hidden state spikes in video diffusion transformers. We observed that MAs emerge consistently across all visual tokens, with a clear magnitude hierarchy: first-frame tokens exhibit the largest MA magnitudes, latent-frame boundary tokens (the head and tail portions of each temporal chunk in the latent space) show elevated but slightly lower MA magnitudes than the first frame, and interior tokens within each latent frame remain elevated, yet are comparatively moderate in magnitude. This structured pattern suggests that the model implicitly prioritizes token positions aligned with the temporal chunking in the latent space. Based on this observation, we propose Structured Activation Steering (STAS), a training-free self-guidance-like method that steers MA values at first-frame and boundary tokens toward a scaled global maximum reference magnitude. STAS achieves consistent improvements in terms of video quality and temporal coherence across different text-to-video models, while introducing negligible computational overhead.
title Steering Video Diffusion Transformers with Massive Activations
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.17825