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Auteurs principaux: Dallain, Matthis, Rodriguez, Laurent, Perrinet, Laurent Udo, Miramond, Benoît
Format: Preprint
Publié: 2026
Sujets:
Accès en ligne:https://arxiv.org/abs/2603.09613
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author Dallain, Matthis
Rodriguez, Laurent
Perrinet, Laurent Udo
Miramond, Benoît
author_facet Dallain, Matthis
Rodriguez, Laurent
Perrinet, Laurent Udo
Miramond, Benoît
contents Human vision achieves remarkable perceptual performance while operating under strict metabolic constraints. A key ingredient is the selective attention mechanism, driven by rapid saccadic eye movements that constantly reposition the high-resolution fovea onto task-relevant locations, unlike conventional AI systems that process entire images with equal emphasis. Our work aims to draw inspiration from the human visual system to create smarter, more efficient image processing models. Using DINO, a self-supervised Vision Transformer that produces attention maps strikingly similar to human gaze patterns, we explore a saccade inspired method to focus the processing of information on key regions in visual space. To do so, we use the ImageNet dataset in a standard classification task and measure how each successive saccade affects the model's class scores. This selective-processing strategy preserves most of the full-image classification performance and can even outperform it in certain cases. By benchmarking against established saliency models built for human gaze prediction, we demonstrate that DINO provides superior fixation guidance for selecting informative regions. These findings highlight Vision Transformer attention as a promising basis for biologically inspired active vision and open new directions for efficient, neuromorphic visual processing.
format Preprint
id arxiv_https___arxiv_org_abs_2603_09613
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Saccade-inspired Approach to Image Classification using Vision Transformer Attention Maps
Dallain, Matthis
Rodriguez, Laurent
Perrinet, Laurent Udo
Miramond, Benoît
Computer Vision and Pattern Recognition
Human vision achieves remarkable perceptual performance while operating under strict metabolic constraints. A key ingredient is the selective attention mechanism, driven by rapid saccadic eye movements that constantly reposition the high-resolution fovea onto task-relevant locations, unlike conventional AI systems that process entire images with equal emphasis. Our work aims to draw inspiration from the human visual system to create smarter, more efficient image processing models. Using DINO, a self-supervised Vision Transformer that produces attention maps strikingly similar to human gaze patterns, we explore a saccade inspired method to focus the processing of information on key regions in visual space. To do so, we use the ImageNet dataset in a standard classification task and measure how each successive saccade affects the model's class scores. This selective-processing strategy preserves most of the full-image classification performance and can even outperform it in certain cases. By benchmarking against established saliency models built for human gaze prediction, we demonstrate that DINO provides superior fixation guidance for selecting informative regions. These findings highlight Vision Transformer attention as a promising basis for biologically inspired active vision and open new directions for efficient, neuromorphic visual processing.
title A Saccade-inspired Approach to Image Classification using Vision Transformer Attention Maps
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.09613