Seeing Is Believing: Grounding Long-Video Understanding in Spatio-Temporal Visual Evidence

Authors

  • Zhaoyang Wei University of the Chinese Academy of Sciences Tencent
  • Guoliang Wang University of Sydney
  • Guohua Gao University of the Chinese Academy of Sciences
  • Yanchao Hao Tencent
  • Mingda Li Tencent
  • Wenchao Ding Tencent
  • Xi Chen Tencent
  • Shizhu He University of the Chinese Academy of Sciences Institute of automation, Chinese academy of science
  • Xuehui Yu Tencent

DOI:

https://doi.org/10.1609/aaai.v40i13.38031

Abstract

Although Vision Language Models (VLMs) have excelled at image and video understanding, applying them to hour-long videos is held back by two interrelated challenges: exorbitant computational expense and a qualitative breakdown in long-term temporal reasoning. Thus, models tend to generate answers based on speculation instead of solid visual facts, causing both factually incorrect and plausible hallucinations. This problem is compounded by current benchmarks that, by only emphasizing final answers, lack an effective mechanism to check whether reasoning is substantiated by specific visual evidence. This makes it hard to differentiate between true understanding and pretend comprehension, inhibiting targeted model refinement. To address these interrelated challenges of model fragility and evaluation weakness, we adopt a twofold strategy. First, we present EV²-Bench, a large-scale benchmark that breaks new ground by an evaluation paradigm built upon spatio-temporal visual evidence, forcing models to justify answers with checkable hints. Second, we put forward DynamicSelect, an adaptive token compression system that efficiently condenses salient information by a dynamic semantic selector and a hierarchical compression strategy. Comprehensive experiments demonstrate that DynamicSelect significantly outperforms the baselines on EV²-Bench as well as other public benchmarks. Our study offers not only a more effective approach to long-video understanding but also a more stringent evaluation paradigm, indicating the way toward more robust models.

Published

2026-03-14

How to Cite

Wei, Z., Wang, G., Gao, G., Hao, Y., Li, M., Ding, W., … Yu, X. (2026). Seeing Is Believing: Grounding Long-Video Understanding in Spatio-Temporal Visual Evidence. Proceedings of the AAAI Conference on Artificial Intelligence, 40(13), 10584–10592. https://doi.org/10.1609/aaai.v40i13.38031

Issue

Section

AAAI Technical Track on Computer Vision X