Privacy-Preserving Semantic Communication over Wiretap Channels with Learnable Differential Privacy
Weixuan Chen, Qianqian Yang, Shuo Shao, Shunpu Tang, Zhiguo Shi, Shui Yu

TL;DR
This paper introduces a privacy-preserving semantic communication framework for image transmission over wiretap channels, utilizing learnable differential privacy noise to protect private information while maintaining task performance.
Contribution
It proposes a novel DP noise pattern learned via adversarial training, enabling explicit control of security levels and improved privacy protection in semantic communication.
Findings
Significantly degrades eavesdropper's image reconstruction quality.
Maintains high task performance with slight degradation.
Achieves LPIPS and FPPSR advantages over previous methods.
Abstract
While semantic communication (SemCom) improves transmission efficiency by focusing on task-relevant information, it also raises critical privacy concerns. Many existing secure SemCom approaches rely on restrictive or impractical assumptions, such as favorable channel conditions for the legitimate user or prior knowledge of the eavesdropper's model. To address these limitations, this paper proposes a novel secure SemCom framework for image transmission over wiretap channels, leveraging differential privacy (DP) to provide approximate privacy guarantees. Specifically, our approach first extracts disentangled semantic representations from source images using generative adversarial network (GAN) inversion method, and then selectively perturbs private semantic representations with approximate DP noise. Distinct from conventional DP-based protection methods, we introduce DP noise with…
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