D²-JSCC: Digital Deep Joint Source-Channel Coding for Semantic Communications

Jianhao Huang;Kai Yuan;Chuan Huang;Kaibin Huang
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Abstract

Semantic communications (SemCom) have emerged as a new paradigm for supporting sixth-generation applications, where semantic features of data are transmitted using artificial intelligence algorithms to attain high communication efficiencies. Most existing SemCom techniques utilize deep neural networks (DNNs) to implement analog source-channel mappings, which are incompatible with existing digital communication architectures. To address this issue, this paper proposes a novel framework of digital deep joint source-channel coding (D2-JSCC) targeting image transmission in SemCom. The framework features digital source and channel codings that are jointly optimized to reduce the end-to-end (E2E) distortion. First, deep source coding with an adaptive prior model is designed to encode semantic features according to their distributions. Second, channel coding is employed to protect encoded features against channel distortion. To facilitate their joint design, the E2E distortion is characterized as a function of the source and channel rates via the analysis of the Bayesian model and Lipschitz assumption on the DNNs. Then to minimize the E2E distortion, a two-step algorithm is proposed to control the source-channel rates for a given channel signal-to-noise ratio. Simulation results reveal that the proposed framework outperforms classic deep JSCC and mitigates the cliff and leveling-off effects, which commonly exist for separation-based approaches.
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语义通信的数字深度联合源信道编码
语义通信(SemCom)已成为支持第六代应用的新范式,其中数据的语义特征使用人工智能算法传输,以实现高通信效率。大多数现有的SemCom技术利用深度神经网络(dnn)来实现模拟源信道映射,这与现有的数字通信架构不兼容。为了解决这一问题,本文提出了一种针对SemCom图像传输的数字深度联合源信道编码(D2-JSCC)框架。该框架具有联合优化的数字源和信道编码,以减少端到端(E2E)失真。首先,设计了基于自适应先验模型的深度源编码,根据语义特征的分布对其进行编码。其次,采用信道编码保护编码特征不受信道失真的影响。为了便于它们的联合设计,通过对dnn的贝叶斯模型和Lipschitz假设的分析,将端到端失真表征为源速率和信道速率的函数。然后,为了最小化端到端失真,提出了一种两步算法来控制给定信道信噪比下的源信道速率。仿真结果表明,所提出的框架优于经典的深度JSCC,并减轻了基于分离的方法通常存在的悬崖效应和趋平效应。
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