Papers
arxiv:2603.27593

STRIDE: When to Speak Meets Sequence Denoising for Streaming Video Understanding

Published on Mar 29
· Submitted by
Junho Kim
on Mar 31
Authors:
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Abstract

STRIDE enables proactive video understanding by modeling temporal activation patterns through iterative denoising within sliding windows, improving timing decisions in streaming scenarios.

AI-generated summary

Recent progress in video large language models (Video-LLMs) has enabled strong offline reasoning over long and complex videos. However, real-world deployments increasingly require streaming perception and proactive interaction, where video frames arrive online and the system must decide not only what to respond, but also when to respond. In this work, we revisit proactive activation in streaming video as a structured sequence modeling problem, motivated by the observation that temporal transitions in streaming video naturally form span-structured activation patterns. To capture this span-level structure, we model activation signals jointly over a sliding temporal window and update them iteratively as new frames arrive. We propose STRIDE (Structured Temporal Refinement with Iterative DEnoising), which employs a lightweight masked diffusion module at the activation interface to jointly predict and progressively refine activation signals across the window. Extensive experiments on diverse streaming benchmarks and downstream models demonstrate that STRIDE shows more reliable and temporally coherent proactive responses, significantly improving when-to-speak decision quality in online streaming scenarios.

Community

STRIDE produces temporally coherent proactive responses in online streaming settings, determining when and what to respond as the video unfolds.

Project page: https://interlive-team.github.io/STRIDE/

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