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Progressive Online Video Understanding with Evidence-Aligned Timing and Transparent Decisions

Kecheng Zhang
Zongxin Yang
Mingfei Han
Haihong Hao
Yunzhi Zhuge
Changlin Li
Junhan Zhao
Zhihui Li
Xiaojun Chang
Main:12 Pages
12 Figures
Bibliography:1 Pages
8 Tables
Appendix:15 Pages
Abstract

Visual agents operating in the wild must respond to queries precisely when sufficient evidence first appears in a video stream, a critical capability that is overlooked by conventional video LLMs evaluated in offline settings. The shift to an online, streaming paradigm introduces significant challenges: a lack of decision transparency, the difficulty of aligning response timing with visual evidence, and the need to maintain a global, causally consistent understanding under tight computational budgets. To address these issues, we propose a novel framework that decouples reasoning control from memory integration. We introduce \textbf{\model{}}, an instantiation of this framework with two core components. First, the \emph{Active Thinking Decision Maker (ATDM)} is a transparent reasoning controller that externalizes its decision process using observable progress (ρ\boldsymbol{\rho}) and confidence (c\boldsymbol{c}) metrics. This allows it to precisely time its response trt_r to match the first-sufficient-evidence timestamp tt^\star while streaming its reasoning to the user. Second, the \emph{Hierarchical Progressive Semantic Integration (HPSI)} module acts as an efficient memory system. It employs a set of learnable, multi-level aggregation tokens that are propagated across clips to build a rich, global cognitive state without exceeding token budgets. %Our approach sets a new standard on key online video understanding benchmarks, achieving strong performance of \textbf{71.6\%} on StreamingBench and \textbf{46.9\%} on OVOBench, demonstrating a robust solution for evidence-aligned and transparent online video analysis. Extensive experiments demonstrate the effectiveness of ATDM and HPSI, e.g., Thinking-QwenVL improves the accuracy of the previous state-of-the-art from 67.63\% to 71.60\% on the StreamingBench benchmark.

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