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Autores principales: Zhang, Xufeng, Huang, Yinhuan, Ying, Jingkai, Liu, Huan, Qin, Zhijin
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2605.30988
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author Zhang, Xufeng
Huang, Yinhuan
Ying, Jingkai
Liu, Huan
Qin, Zhijin
author_facet Zhang, Xufeng
Huang, Yinhuan
Ying, Jingkai
Liu, Huan
Qin, Zhijin
contents Semantic communication has demonstrated significant potential for image transmission, especially in bandwidth-limited and low signal-to-noise ratio scenarios. However, most existing methods are based on analog transmission, which poses challenges to the compatibility with existing digital communication systems. Existing digital semantic communication methods commonly adopt conventional quadrature amplitude modulation constellations, which mismatch the empirical distribution of semantic features produced by the semantic encoder. This paper proposes a distribution-aware learnable modulation for semantic communication framework, which bridges semantic feature representations and discrete modulation through constellation learning. Specifically, a learnable constellation module, initialized with an amplitude phase shift keying geometric prior, is developed to refine the constellation geometry as a trainable codebook, enabling modulation symbols to better align with the distribution of semantic features. To enable end-to-end optimization, a two-stage training strategy is introduced, combining differentiable soft assignment with straight-through estimator. Simulation results show that the proposed framework consistently outperforms existing digital semantic communication schemes and achieves performance comparable to advanced analog methods.
format Preprint
id arxiv_https___arxiv_org_abs_2605_30988
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Distribution-Aware Constellation Learning for Image Transmission
Zhang, Xufeng
Huang, Yinhuan
Ying, Jingkai
Liu, Huan
Qin, Zhijin
Signal Processing
Semantic communication has demonstrated significant potential for image transmission, especially in bandwidth-limited and low signal-to-noise ratio scenarios. However, most existing methods are based on analog transmission, which poses challenges to the compatibility with existing digital communication systems. Existing digital semantic communication methods commonly adopt conventional quadrature amplitude modulation constellations, which mismatch the empirical distribution of semantic features produced by the semantic encoder. This paper proposes a distribution-aware learnable modulation for semantic communication framework, which bridges semantic feature representations and discrete modulation through constellation learning. Specifically, a learnable constellation module, initialized with an amplitude phase shift keying geometric prior, is developed to refine the constellation geometry as a trainable codebook, enabling modulation symbols to better align with the distribution of semantic features. To enable end-to-end optimization, a two-stage training strategy is introduced, combining differentiable soft assignment with straight-through estimator. Simulation results show that the proposed framework consistently outperforms existing digital semantic communication schemes and achieves performance comparable to advanced analog methods.
title Distribution-Aware Constellation Learning for Image Transmission
topic Signal Processing
url https://arxiv.org/abs/2605.30988