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Main Authors: Dalal, Dwip, Vashishtha, Gautam, Mishra, Utkarsh, Kim, Jeonghwan, Kanda, Madhav, Ha, Hyeonjeong, Lazebnik, Svetlana, Ji, Heng, Jain, Unnat
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.09741
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author Dalal, Dwip
Vashishtha, Gautam
Mishra, Utkarsh
Kim, Jeonghwan
Kanda, Madhav
Ha, Hyeonjeong
Lazebnik, Svetlana
Ji, Heng
Jain, Unnat
author_facet Dalal, Dwip
Vashishtha, Gautam
Mishra, Utkarsh
Kim, Jeonghwan
Kanda, Madhav
Ha, Hyeonjeong
Lazebnik, Svetlana
Ji, Heng
Jain, Unnat
contents Multimodal large language models (MLLMs) often miss small details and spatial relations in cluttered scenes, leading to errors in fine-grained perceptual grounding. We introduce AttWarp, a lightweight method that allocates more resolution to query-relevant content while compressing less informative areas, all while preserving global context. At test time, the approach uses an MLLM's cross-modal attention to perform rectilinear warping of the input image, reallocating spatial resolution toward regions the model deems important, without changing model weights or architecture. This attention-guided warping preserves all original image information but redistributes it non-uniformly, so small objects and subtle relationships become easier for the same model to read while the global layout remains intact. Across five benchmarks (TextVQA, GQA, DocVQA, POPE, MMMU) and four MLLMs (LLaVA, Qwen-VL, InternVL, and InstructBLIP), AttWarp consistently improves accuracy, strengthens compositional reasoning, and reduces hallucinations, outperforming four competitive baselines that manipulate raw images at test time. Together, these results show that attention-guided warping prioritizes information relevant to the query while preserving context, and that the same MLLMs perform better when given such warped inputs.
format Preprint
id arxiv_https___arxiv_org_abs_2510_09741
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Constructive Distortion: Improving MLLMs with Attention-Guided Image Warping
Dalal, Dwip
Vashishtha, Gautam
Mishra, Utkarsh
Kim, Jeonghwan
Kanda, Madhav
Ha, Hyeonjeong
Lazebnik, Svetlana
Ji, Heng
Jain, Unnat
Computer Vision and Pattern Recognition
Machine Learning
Multimodal large language models (MLLMs) often miss small details and spatial relations in cluttered scenes, leading to errors in fine-grained perceptual grounding. We introduce AttWarp, a lightweight method that allocates more resolution to query-relevant content while compressing less informative areas, all while preserving global context. At test time, the approach uses an MLLM's cross-modal attention to perform rectilinear warping of the input image, reallocating spatial resolution toward regions the model deems important, without changing model weights or architecture. This attention-guided warping preserves all original image information but redistributes it non-uniformly, so small objects and subtle relationships become easier for the same model to read while the global layout remains intact. Across five benchmarks (TextVQA, GQA, DocVQA, POPE, MMMU) and four MLLMs (LLaVA, Qwen-VL, InternVL, and InstructBLIP), AttWarp consistently improves accuracy, strengthens compositional reasoning, and reduces hallucinations, outperforming four competitive baselines that manipulate raw images at test time. Together, these results show that attention-guided warping prioritizes information relevant to the query while preserving context, and that the same MLLMs perform better when given such warped inputs.
title Constructive Distortion: Improving MLLMs with Attention-Guided Image Warping
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2510.09741