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Main Authors: Li, Xu, Zheng, Yi, Liang, Yuxuan, Liu, Zhe, Chen, Xiaolei, Chen, Haotian, Zhu, Rui, Xue, Xiangyang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.21105
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author Li, Xu
Zheng, Yi
Liang, Yuxuan
Liu, Zhe
Chen, Xiaolei
Chen, Haotian
Zhu, Rui
Xue, Xiangyang
author_facet Li, Xu
Zheng, Yi
Liang, Yuxuan
Liu, Zhe
Chen, Xiaolei
Chen, Haotian
Zhu, Rui
Xue, Xiangyang
contents Large Vision-Language Models (LVLMs) rely on dense visual tokens to capture fine-grained visual information, but processing all these tokens incurs substantial computational and memory overhead during inference. To address this issue, we propose ResPrune, a training-free visual token pruning framework that enables efficient LVLM inference by selecting a compact yet informative subset of visual tokens. ResPrune formulates visual token pruning as a subspace reconstruction problem and employs a greedy subspace expansion strategy guided by residual energy, allowing it to preserve the geometric structure of the original visual token space. To further incorporate cross modal alignment, the selection process is conditioned on textual relevance, encouraging the retention of tokens that are both informative and instruction-relevant. The proposed method is lightweight and model-agnostic, and can be seamlessly integrated into existing LVLM pipelines without retraining or architectural modifications. Extensive experiments on multiple LVLM backbones, including LLaVA-1.5, LLaVA-NeXT, and Qwen2.5-VL, demonstrate that ResPrune consistently outperforms existing pruning approaches across a wide range of benchmarks, while achieving effective reductions in computation, memory consumption, and inference latency.
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spellingShingle ResPrune: Text-Conditioned Subspace Reconstruction for Visual Token Pruning in Large Vision-Language Models
Li, Xu
Zheng, Yi
Liang, Yuxuan
Liu, Zhe
Chen, Xiaolei
Chen, Haotian
Zhu, Rui
Xue, Xiangyang
Machine Learning
Large Vision-Language Models (LVLMs) rely on dense visual tokens to capture fine-grained visual information, but processing all these tokens incurs substantial computational and memory overhead during inference. To address this issue, we propose ResPrune, a training-free visual token pruning framework that enables efficient LVLM inference by selecting a compact yet informative subset of visual tokens. ResPrune formulates visual token pruning as a subspace reconstruction problem and employs a greedy subspace expansion strategy guided by residual energy, allowing it to preserve the geometric structure of the original visual token space. To further incorporate cross modal alignment, the selection process is conditioned on textual relevance, encouraging the retention of tokens that are both informative and instruction-relevant. The proposed method is lightweight and model-agnostic, and can be seamlessly integrated into existing LVLM pipelines without retraining or architectural modifications. Extensive experiments on multiple LVLM backbones, including LLaVA-1.5, LLaVA-NeXT, and Qwen2.5-VL, demonstrate that ResPrune consistently outperforms existing pruning approaches across a wide range of benchmarks, while achieving effective reductions in computation, memory consumption, and inference latency.
title ResPrune: Text-Conditioned Subspace Reconstruction for Visual Token Pruning in Large Vision-Language Models
topic Machine Learning
url https://arxiv.org/abs/2603.21105