IVLGNISep 5, 2023

Generative AI-aided Joint Training-free Secure Semantic Communications via Multi-modal Prompts

arXiv:2309.02616v149 citationsh-index: 118
Originality Incremental advance
AI Analysis

This addresses the problem of efficient and secure semantic communication for network resource reduction, though it appears incremental by building on existing generative AI methods.

The paper tackles the computational overhead and instability in semantic communication systems by proposing a generative AI-aided approach with multi-modal prompts and covert communications, achieving secure and accurate message transmission without joint training.

Semantic communication (SemCom) holds promise for reducing network resource consumption while achieving the communications goal. However, the computational overheads in jointly training semantic encoders and decoders-and the subsequent deployment in network devices-are overlooked. Recent advances in Generative artificial intelligence (GAI) offer a potential solution. The robust learning abilities of GAI models indicate that semantic decoders can reconstruct source messages using a limited amount of semantic information, e.g., prompts, without joint training with the semantic encoder. A notable challenge, however, is the instability introduced by GAI's diverse generation ability. This instability, evident in outputs like text-generated images, limits the direct application of GAI in scenarios demanding accurate message recovery, such as face image transmission. To solve the above problems, this paper proposes a GAI-aided SemCom system with multi-model prompts for accurate content decoding. Moreover, in response to security concerns, we introduce the application of covert communications aided by a friendly jammer. The system jointly optimizes the diffusion step, jamming, and transmitting power with the aid of the generative diffusion models, enabling successful and secure transmission of the source messages.

Foundations

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