Knowledge-Assisted Privacy Preserving in Semantic Communication
Xuesong Liu, Yao Sun, Runze Cheng, Le Xia, Hanaa Abumarshoud, Lei, Zhang, Muhammad Ali Imran

TL;DR
This paper introduces a novel framework that leverages knowledge management to enhance privacy in semantic communication systems, addressing potential security threats from advanced eavesdroppers.
Contribution
It proposes a knowledge-assisted privacy preserving semantic communication framework with a new transceiver design and discusses practical implementation challenges.
Findings
Identified potential privacy attacks in semantic communication.
Developed a framework integrating knowledge management for privacy protection.
Discussed practical challenges for real-world deployment.
Abstract
Semantic communication (SC) offers promising advancements in data transmission efficiency and reliability by focusing on delivering true meaning rather than solely binary bits of messages. However, privacy concerns in SC might become outstanding. Eavesdroppers equipped with advanced semantic coding models and extensive knowledge could be capable of correctly decoding and reasoning sensitive semantics from just a few stolen bits. To this end, this article explores utilizing knowledge to enhance data privacy in SC networks. Specifically, we first identify the potential attacks in SC based on the analysis of knowledge. Then, we propose a knowledge-assisted privacy preserving SC framework, which consists of a data transmission layer for precisely encoding and decoding source messages, and a knowledge management layer responsible for injecting appropriate knowledge into the transmission…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
