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arxiv:2601.22674

VisionTrim: Unified Vision Token Compression for Training-Free MLLM Acceleration

Published on Jan 30
ยท Submitted by
Hanxun Yu
on Feb 3
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Abstract

VisionTrim is a training-free framework that accelerates multimodal large language models by selecting dominant visual tokens and merging them with text-guided complementation, improving efficiency without performance loss.

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Multimodal large language models (MLLMs) suffer from high computational costs due to excessive visual tokens, particularly in high-resolution and video-based scenarios. Existing token reduction methods typically focus on isolated pipeline components and often neglect textual alignment, leading to performance degradation. In this paper, we propose VisionTrim, a unified framework for training-free MLLM acceleration, integrating two effective plug-and-play modules: 1) the Dominant Vision Token Selection (DVTS) module, which preserves essential visual tokens via a global-local view, and 2) the Text-Guided Vision Complement (TGVC) module, which facilitates context-aware token merging guided by textual cues. Extensive experiments across diverse image and video multimodal benchmarks demonstrate the performance superiority of our VisionTrim, advancing practical MLLM deployment in real-world applications. The code is available at: https://github.com/hanxunyu/VisionTrim.

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An efficient vision token compression framework with two modules, Dominant Vision Token Selection (DVTS) and Text-Guided Vision Complement (TGVC).

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