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Main Authors: Zhang, Zhilong, Zhang, Xinhui, Jin, Gongyu, Wang, Sihua, Liu, Danpu, Yin, Changchuan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.00114
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author Zhang, Zhilong
Zhang, Xinhui
Jin, Gongyu
Wang, Sihua
Liu, Danpu
Yin, Changchuan
author_facet Zhang, Zhilong
Zhang, Xinhui
Jin, Gongyu
Wang, Sihua
Liu, Danpu
Yin, Changchuan
contents Image semantic communication is a critical component in next-generation wireless communication systems. However, such systems typically suffer from large memory footprints and high computational complexity, making them difficult to deploy on resource-constrained devices. To address these challenges, we propose a vision transformer (ViT)-enabled image semantic communication system. In this system, a recursive structure is introduced to iteratively refine semantic features and reduce the parameter count. In addition, three dynamic adjustment strategies are designed to adaptively reduce computational complexity: dynamic depth adjustment, dynamic width adjustment, and joint width-depth optimization. Dynamic depth adjustment adaptively determines the number of recursive modules according to image content and channel conditions, while dynamic width adjustment selectively preserves important neurons and attention heads. The joint width-depth optimization further enables flexible computation configurations. Simulation results verify that the proposed recursive ViT-based system, combined with the three dynamic adjustment strategies, reduces the parameter count by 48.7% and achieves higher reconstruction quality than existing baselines under comparable computational complexity.
format Preprint
id arxiv_https___arxiv_org_abs_2606_00114
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Recursive Vision Transformer with Dynamic Depth and Width Adjustment for Resource-Efficient Image Semantic Communication
Zhang, Zhilong
Zhang, Xinhui
Jin, Gongyu
Wang, Sihua
Liu, Danpu
Yin, Changchuan
Computer Vision and Pattern Recognition
Information Theory
Image semantic communication is a critical component in next-generation wireless communication systems. However, such systems typically suffer from large memory footprints and high computational complexity, making them difficult to deploy on resource-constrained devices. To address these challenges, we propose a vision transformer (ViT)-enabled image semantic communication system. In this system, a recursive structure is introduced to iteratively refine semantic features and reduce the parameter count. In addition, three dynamic adjustment strategies are designed to adaptively reduce computational complexity: dynamic depth adjustment, dynamic width adjustment, and joint width-depth optimization. Dynamic depth adjustment adaptively determines the number of recursive modules according to image content and channel conditions, while dynamic width adjustment selectively preserves important neurons and attention heads. The joint width-depth optimization further enables flexible computation configurations. Simulation results verify that the proposed recursive ViT-based system, combined with the three dynamic adjustment strategies, reduces the parameter count by 48.7% and achieves higher reconstruction quality than existing baselines under comparable computational complexity.
title Recursive Vision Transformer with Dynamic Depth and Width Adjustment for Resource-Efficient Image Semantic Communication
topic Computer Vision and Pattern Recognition
Information Theory
url https://arxiv.org/abs/2606.00114