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Bibliographic Details
Main Authors: Morlier, Jeremy, Leonardon, Mathieu, Gripon, Vincent
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.03749
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author Morlier, Jeremy
Leonardon, Mathieu
Gripon, Vincent
author_facet Morlier, Jeremy
Leonardon, Mathieu
Gripon, Vincent
contents Model compression is a critical area of research in deep learning, in particular in vision, driven by the need to lighten models memory or computational footprints. While numerous methods for model compression have been proposed, most focus on pruning, quantization, or knowledge distillation. In this work, we delve into an under-explored avenue: reducing the resolution of the input image as a complementary approach to other types of compression. By systematically investigating the impact of input resolution reduction, on both tasks of classification and semantic segmentation, and on convnets and transformer-based architectures, we demonstrate that this strategy provides an interesting alternative for model compression. Our experimental results on standard benchmarks highlight the potential of this method, achieving competitive performance while significantly reducing computational and memory requirements. This study establishes input resolution reduction as a viable and promising direction in the broader landscape of model compression techniques for vision applications.
format Preprint
id arxiv_https___arxiv_org_abs_2504_03749
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Input Resolution Downsizing as a Compression Technique for Vision Deep Learning Systems
Morlier, Jeremy
Leonardon, Mathieu
Gripon, Vincent
Machine Learning
Model compression is a critical area of research in deep learning, in particular in vision, driven by the need to lighten models memory or computational footprints. While numerous methods for model compression have been proposed, most focus on pruning, quantization, or knowledge distillation. In this work, we delve into an under-explored avenue: reducing the resolution of the input image as a complementary approach to other types of compression. By systematically investigating the impact of input resolution reduction, on both tasks of classification and semantic segmentation, and on convnets and transformer-based architectures, we demonstrate that this strategy provides an interesting alternative for model compression. Our experimental results on standard benchmarks highlight the potential of this method, achieving competitive performance while significantly reducing computational and memory requirements. This study establishes input resolution reduction as a viable and promising direction in the broader landscape of model compression techniques for vision applications.
title Input Resolution Downsizing as a Compression Technique for Vision Deep Learning Systems
topic Machine Learning
url https://arxiv.org/abs/2504.03749