ITITApr 7

Generative Channel Knowledge Base With Environmental Information for Joint Source-Channel Coding in Semantic Communications

arXiv:2604.0534253.7h-index: 3
AI Analysis

This addresses performance limitations in 6G semantic communications by incorporating environmental factors, representing an incremental improvement over existing approaches.

The paper tackles the problem of semantic communication systems overlooking environmental impacts on transmission by proposing a generative channel knowledge base with environmental information for joint source-channel coding. Experimental results show their method achieves channel matrix estimation error at the 10^-3 level and significantly outperforms existing benchmarks in transmission performance.

Semantic knowledge bases are regarded as a promising technology for upcoming 6G communications. However, existing studies mainly focus on source-side semantic modeling while overlooking the structural impact of propagation environments on semantic transmission performance. To address this issue, we propose a generative channel knowledge base (CKB) with environmental information to facilitate joint source-channel coding (JSCC) in semantic communications (SemCom) systems. First, to enable the construction of the CKB, an environment-aware dataset is established by collecting spatial position information, global image features, fine-grained semantic features, and the corresponding channel matrices. A region-of-interest (ROI)-based filtering algorithm is further designed to remove semantic components that are irrelevant to signal propagation. Second, a Transformer-based generative framework is developed to learn the mapping between multidimensional environmental information and channel matrices. A self-attention mechanism is introduced to adaptively fuse heterogeneous features, enabling the construction of a structured CKB. Third, a CKB-driven JSCC SemCom architecture is proposed, where the generated channel knowledge is injected into both of the encoder and decoder to jointly exploit source semantics and channel-environment priors in an end-to-end manner. Experimental results demonstrate that the proposed multidimensional feature fusion method achieves a channel matrix estimation error at the $10^{-3}$ level. Moreover, the CKB-driven JSCC SemCom framework integrated into SemCom systems significantly outperforms existing benchmark schemes in terms of transmission performance.

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