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arxiv 2507.09514 v1 pith:VCP2PEUL submitted 2025-07-13 cs.CV cs.AI

QuarterMap: Efficient Post-Training Token Pruning for Visual State Space Models

classification cs.CV cs.AI
keywords quartermapmethodvmambaaccuracyfour-directionalimprovesmodelspost-training
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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State space models (SSMs) reduce the quadratic complexity of transformers by leveraging linear recurrence. Recently, VMamba has emerged as a strong SSM-based vision backbone, yet remains bottlenecked by spatial redundancy in its four-directional scan. We propose QuarterMap, a post-training activation pruning method that removes redundant spatial activations before scanning and restores dimensions via nearest-neighbor upsampling. Our method improves throughput without retraining. On ImageNet-1K, QuarterMap achieves up to 11% speedup on VMamba with less than 0.9% accuracy drop, and yields similar gains on ADE20K segmentation. Beyond VMamba, we validate QuarterMap on MedMamba, a domain-specific model that shares the same four-directional scanning structure, where it consistently improves throughput while preserving accuracy across multiple medical imaging tasks. Compared to token merging methods like ToMe, QuarterMap is tailored for SSMs and avoids costly merge-unmerge operations. Our method offers a plug-and-play tool for deployment-time efficiency without compromising transferability.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Spatial-Aware Reduction Framework: Towards Efficient and Faithful Visual State Space Models

    cs.CV 2026-06 unverdicted novelty 6.0

    STORM is a training-free spatial-aware token reduction framework that reformulates compression on spatial units to preserve grid topology and neighborhood coherence in visual state space models.