IRS-Enhanced Secure Semantic Communication Networks: Cross-Layer and Context-Awared Resource Allocation
Lingyi Wang, Wei Wu, Fuhui Zhou, Zhijin Qin, Qihui Wu

TL;DR
This paper introduces IRS-enhanced secure semantic communication with a hierarchical codebook, novel security metrics, and AI-driven resource allocation to improve security and transmission efficiency in wireless networks.
Contribution
It proposes a task-oriented semantic security framework with a multi-layer codebook, new security metrics, and a noise-enhanced deep reinforcement learning scheme for resource optimization.
Findings
Enhanced security performance compared to benchmarks.
Improved secure semantic spectrum efficiency (S-SSE).
Effective semantic context awareness in resource allocation.
Abstract
Learning-task oriented semantic communication is pivotal in optimizing transmission efficiency by extracting and conveying essential semantics tailored to specific tasks, such as image reconstruction and classification. Nevertheless, the challenge of eavesdropping poses a formidable threat to semantic privacy due to the open nature of wireless communications. In this paper, intelligent reflective surface (IRS)-enhanced secure semantic communication (IRS-SSC) is proposed to guarantee the physical layer security from a task-oriented semantic perspective. Specifically, a multi-layer codebook is exploited to discretize continuous semantic features and describe semantics with different numbers of bits, thereby meeting the need for hierarchical semantic representation and further enhancing the transmission efficiency. Novel semantic security metrics, i.e., secure semantic rate (S-SR) and…
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Taxonomy
TopicsCognitive Computing and Networks · Security in Wireless Sensor Networks · Advanced Graph Neural Networks
