Semantic communications conveys task-relevant meaning rather than focusing solely on message reconstruction, improving bandwidth efficiency and robustness for next-generation wireless systems. However, learned semantic representations can still leak sensitive information to unintended receivers (eavesdroppers). This paper presents a deep learning-based semantic communication framework that jointly supports multiple receiver tasks while explicitly limiting semantic leakage to an eavesdropper. The legitimate link employs a learned encoder at the transmitter, while the receiver trains decoders for semantic inference and data reconstruction. The security problem is formulated via an iterative min-max optimization in which an eavesdropper is trained to improve its semantic inference, while the legitimate transmitter-receiver pair is trained to preserve task performance while reducing the eavesdropper's success. We also introduce an auxiliary layer that superimposes a cooperative, adversarially crafted perturbation on the transmitted waveform to degrade semantic leakage to an eavesdropper. Performance is evaluated over Rayleigh fading channels with additive white Gaussian noise using MNIST and CIFAR-10 datasets. Semantic accuracy and reconstruction quality improve with increasing latent dimension, while the min-max mechanism reduces the eavesdropper's inference performance significantly without degrading the legitimate receiver. The perturbation layer is successful in reducing semantic leakage even when the legitimate link is trained only for its own task. This comprehensive framework motivates semantic communication designs with tunable, end-to-end privacy against adaptive adversaries in realistic wireless settings.
翻译:语义通信传递任务相关的含义而非仅关注消息重建,从而提升下一代无线系统的带宽效率与鲁棒性。然而,学习得到的语义表示仍可能向非目标接收方(窃听者)泄露敏感信息。本文提出一种基于深度学习的语义通信框架,该框架在联合支持多接收方任务的同时,显式限制向窃听者的语义泄露。合法链路在发射端采用学习型编码器,而接收端则训练用于语义推断与数据重建的解码器。安全问题的建模通过迭代式最小-最大优化实现:在该优化中,窃听者被训练以提升其语义推断能力,而合法收发双方则被训练在维持任务性能的同时降低窃听者的成功率。我们还引入一个辅助层,该层在发射波形上叠加一个协作生成的对抗性扰动,以降低向窃听者的语义泄露。性能在瑞利衰落信道与加性高斯白噪声环境下,使用MNIST和CIFAR-10数据集进行评估。语义准确度与重建质量随潜在维度增加而提升,而最小-最大机制能在不损害合法接收方性能的前提下显著降低窃听者的推断性能。即使合法链路仅针对自身任务进行训练,扰动层仍能有效减少语义泄露。这一综合框架为在实际无线场景中设计具有可调谐、端到端隐私保护能力以应对自适应攻击者的语义通信系统提供了理论依据。