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Main Authors: Song, Junha, Heo, Byeongho, Gu, Geonmo, Choo, Jaegul, Han, Dongyoon, Yun, Sangdoo
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.13080
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author Song, Junha
Heo, Byeongho
Gu, Geonmo
Choo, Jaegul
Han, Dongyoon
Yun, Sangdoo
author_facet Song, Junha
Heo, Byeongho
Gu, Geonmo
Choo, Jaegul
Han, Dongyoon
Yun, Sangdoo
contents When humans describe a visual scene, they do not process the entire image uniformly; instead, they selectively fixate on regions relevant to their intended description. In contrast, current multimodal large language models (MLLMs) attend to all visual tokens at each generation step, leading to diluted focus and unnecessary computational overhead. In this work, we introduce Gaze Attention, a novel mechanism that enables MLLMs to selectively attend to task-relevant visual regions during generation. Specifically, we spatially group visual embeddings-stored as key-value caches-into compact gaze regions, each represented by a lightweight descriptor. At each decoding step, the model dynamically selects the most relevant regions and restricts attention to them, reducing redundant computation while enhancing focus. To mitigate the loss of global context caused by localized attention, we further propose learnable context tokens appended to each image or frame, allowing the model to maintain holistic visual awareness. Extensive experiments on image and video understanding benchmarks demonstrate that Gaze Attention matches or surpasses dense-attention baselines, while using up to 90% fewer visual KV entries in the attention computation.
format Preprint
id arxiv_https___arxiv_org_abs_2605_13080
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning to See What You Need: Gaze Attention for Multimodal Large Language Models
Song, Junha
Heo, Byeongho
Gu, Geonmo
Choo, Jaegul
Han, Dongyoon
Yun, Sangdoo
Computer Vision and Pattern Recognition
When humans describe a visual scene, they do not process the entire image uniformly; instead, they selectively fixate on regions relevant to their intended description. In contrast, current multimodal large language models (MLLMs) attend to all visual tokens at each generation step, leading to diluted focus and unnecessary computational overhead. In this work, we introduce Gaze Attention, a novel mechanism that enables MLLMs to selectively attend to task-relevant visual regions during generation. Specifically, we spatially group visual embeddings-stored as key-value caches-into compact gaze regions, each represented by a lightweight descriptor. At each decoding step, the model dynamically selects the most relevant regions and restricts attention to them, reducing redundant computation while enhancing focus. To mitigate the loss of global context caused by localized attention, we further propose learnable context tokens appended to each image or frame, allowing the model to maintain holistic visual awareness. Extensive experiments on image and video understanding benchmarks demonstrate that Gaze Attention matches or surpasses dense-attention baselines, while using up to 90% fewer visual KV entries in the attention computation.
title Learning to See What You Need: Gaze Attention for Multimodal Large Language Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.13080