Less Signals, More Understanding: Channel-Capacity Codebook Design for Digital Task-Oriented Semantic Communication
Anbang Zhang, Shuaishuai Guo, Chenyuan Feng, Hongyang Du, Haojin Li, Chen Sun, and Haijun Zhang

TL;DR
This paper introduces a channel-aware discrete semantic coding framework for task-oriented semantic communication, enhancing robustness and efficiency in low-power edge networks by aligning codebook design with channel characteristics.
Contribution
It proposes a Wasserstein-regularized approach to optimize discrete codebooks considering channel conditions, improving semantic fidelity and task accuracy.
Findings
Achieves significant accuracy improvements across SNR regimes.
Enhances communication efficiency with discrete semantic codes.
Provides insights into integrating channel-aware design in semantic coding.
Abstract
Discrete representation has emerged as a powerful tool in task-oriented semantic communication (ToSC), offering compact, interpretable, and efficient representations well-suited for low-power edge intelligence scenarios. Its inherent digital nature aligns seamlessly with hardware-friendly deployment and robust storage/transmission protocols. However, despite its strengths, current ToSC frameworks often decouple semantic-aware discrete mapping from the underlying channel characteristics and task demands. This mismatch leads to suboptimal communication performance, degraded task utility, and limited generalization under variable wireless conditions. Moreover, conventional designs frequently overlook channel-awareness in codebook construction, restricting the effectiveness of semantic symbol selection under constrained resources. To address these limitations, this paper proposes a…
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