Language-Guided Temporal Token Pruning for Efficient VideoLLM Processing

Published: 20 Aug 2025, Last Modified: 24 Apr 2026EMNLP 2025EveryoneRevisionsCC BY 4.0
Abstract: Vision Language Models (VLMs) struggle with long-form videos due to the quadratic complexity of attention mechanisms. We propose Language-Guided Temporal Token Pruning (LGTTP), which leverages temporal cues from queries to adaptively prune video tokens, preserving contextual continuity while reducing computational overhead. Unlike uniform pruning or keyframe selection, LGTTP retains higher token density in temporally relevant segments. Our model-agnostic framework integrates with TimeChat and LLaVAVideo, achieving a 65% reduction in computation while preserving 97-99% of the original performance. On QVHighlights, LGTTP improves HIT@1 by +9.5%, and on CharadesSTA, it retains 99.6% of R@1. It excels on queries with explicit temporal markers and remains effective across general video understanding tasks. The code is available at: https://github.com/yogesh-iitj/LGTTP.
Loading