Multimodal Learning 相关度: 9/10

Zooming without Zooming: Region-to-Image Distillation for Fine-Grained Multimodal Perception

Lai Wei, Liangbo He, Jun Lan, Lingzhong Dong, Yutong Cai, Siyuan Li, Huijia Zhu, Weiqiang Wang, Linghe Kong, Yue Wang, Zhuosheng Zhang, Weiran Huang
arXiv: 2602.11858v1 发布: 2026-02-12 更新: 2026-02-12

AI 摘要

提出Region-to-Image Distillation方法,提升MLLM在细粒度多模态感知上的单次推理能力。

主要贡献

  • 提出 Region-to-Image Distillation 训练方法
  • 构建细粒度多模态感知基准 ZoomBench
  • 实验证明方法有效性

方法论

通过区域裁剪生成高质量 VQA 数据,并用其蒸馏训练 MLLM,使其具备单次推理的细粒度感知能力。

原文摘要

Multimodal Large Language Models (MLLMs) excel at broad visual understanding but still struggle with fine-grained perception, where decisive evidence is small and easily overwhelmed by global context. Recent "Thinking-with-Images" methods alleviate this by iteratively zooming in and out regions of interest during inference, but incur high latency due to repeated tool calls and visual re-encoding. To address this, we propose Region-to-Image Distillation, which transforms zooming from an inference-time tool into a training-time primitive, thereby internalizing the benefits of agentic zooming into a single forward pass of an MLLM. In particular, we first zoom in to micro-cropped regions to let strong teacher models generate high-quality VQA data, and then distill this region-grounded supervision back to the full image. After training on such data, the smaller student model improves "single-glance" fine-grained perception without tool use. To rigorously evaluate this capability, we further present ZoomBench, a hybrid-annotated benchmark of 845 VQA data spanning six fine-grained perceptual dimensions, together with a dual-view protocol that quantifies the global--regional "zooming gap". Experiments show that our models achieve leading performance across multiple fine-grained perception benchmarks, and also improve general multimodal cognition on benchmarks such as visual reasoning and GUI agents. We further discuss when "Thinking-with-Images" is necessary versus when its gains can be distilled into a single forward pass. Our code is available at https://github.com/inclusionAI/Zooming-without-Zooming.

标签

Multimodal Learning Distillation Fine-grained Perception Visual Question Answering

arXiv 分类

cs.CV cs.AI cs.CL cs.LG