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

arXiv:2602.11858v211 citationsh-index: 8Has Code
AI Analysis

This addresses the latency issue in fine-grained multimodal perception for AI applications, offering a more efficient alternative to iterative zooming methods.

The paper tackles the problem of fine-grained perception in Multimodal Large Language Models (MLLMs) by proposing Region-to-Image Distillation, which internalizes zooming benefits into a single forward pass, achieving leading performance on benchmarks like ZoomBench with 845 VQA data across six dimensions.

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.

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