CVFeb 3

IVC-Prune: Revealing the Implicit Visual Coordinates in LVLMs for Vision Token Pruning

arXiv:2602.03060v12 citationsh-index: 6Has Code
AI Analysis

This addresses computational efficiency for LVLM users, though it is an incremental improvement over existing pruning methods.

The paper tackles the high inference cost of Large Vision-Language Models (LVLMs) when processing high-resolution visual inputs by proposing IVC-Prune, a training-free pruning method that retains tokens crucial for spatial reasoning and semantic relevance. The result is a 50% reduction in visual tokens while maintaining ≥99% of original performance across diverse benchmarks.

Large Vision-Language Models (LVLMs) achieve impressive performance across multiple tasks. A significant challenge, however, is their prohibitive inference cost when processing high-resolution visual inputs. While visual token pruning has emerged as a promising solution, existing methods that primarily focus on semantic relevance often discard tokens that are crucial for spatial reasoning. We address this gap through a novel insight into \emph{how LVLMs process spatial reasoning}. Specifically, we reveal that LVLMs implicitly establish visual coordinate systems through Rotary Position Embeddings (RoPE), where specific token positions serve as \textbf{implicit visual coordinates} (IVC tokens) that are essential for spatial reasoning. Based on this insight, we propose \textbf{IVC-Prune}, a training-free, prompt-aware pruning strategy that retains both IVC tokens and semantically relevant foreground tokens. IVC tokens are identified by theoretically analyzing the mathematical properties of RoPE, targeting positions at which its rotation matrices approximate identity matrix or the $90^\circ$ rotation matrix. Foreground tokens are identified through a robust two-stage process: semantic seed discovery followed by contextual refinement via value-vector similarity. Extensive evaluations across four representative LVLMs and twenty diverse benchmarks show that IVC-Prune reduces visual tokens by approximately 50\% while maintaining $\geq$ 99\% of the original performance and even achieving improvements on several benchmarks. Source codes are available at https://github.com/FireRedTeam/IVC-Prune.

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