FlexSelect: Flexible Token Selection for Efficient Long Video Understanding
About
Long-form video understanding poses a significant challenge for video large language models (VideoLLMs) due to prohibitively high computational and memory demands. In this paper, we propose FlexSelect, a flexible and efficient token selection strategy for processing long videos. FlexSelect identifies and retains the most semantically relevant content by leveraging cross-modal attention patterns from a reference transformer layer. It comprises two key components: (1) a training-free token ranking pipeline that leverages faithful cross-modal attention weights to estimate each video token's importance, and (2) a rank-supervised lightweight selector that is trained to replicate these rankings and filter redundant tokens. This generic approach can be seamlessly integrated into various VideoLLM architectures, such as LLaVA-Video, InternVL and Qwen-VL, serving as a plug-and-play module to extend their temporal context length. Empirically, FlexSelect delivers strong gains across multiple long-video benchmarks including VideoMME, MLVU, LongVB, and LVBench. Moreover, it achieves significant speed-ups (for example, up to 9 times on a LLaVA-Video-7B model), highlighting FlexSelect's promise for efficient long-form video understanding. Project page available at: https://yunzhuzhang0918.github.io/flex_select
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Long Video Understanding | LongVideoBench | Score66.4 | 248 | |
| Long Video Understanding | MLVU | Score76.6 | 154 | |
| Long Video Understanding | Video-MME | Overall Score74.4 | 30 | |
| Extremely long-video understanding | LVBench | Score56.6 | 25 | |
| Long Video Understanding | VideoMME 1~60m, w/o subtitles | Score74.4 | 18 | |
| Long Video Understanding | LongVideoBench 8s~60m | Score66.4 | 17 | |
| Long Video Understanding | LVBench 30m~2h | Score56.6 | 12 |