Generative Channel Knowledge Base With Environmental Information for Joint Source-Channel Coding in Semantic Communications
Xudong Long, Hao Chen, Dan Wang, Chen Qiu, Nan Ma, Xiaodong Xu, Yubin Zhao

TL;DR
This paper introduces a generative channel knowledge base with environmental data to improve joint source-channel coding in semantic communications, enhancing transmission performance in 6G systems.
Contribution
It develops an environment-aware dataset and a Transformer-based framework to construct a structured channel knowledge base for semantic communication systems.
Findings
Achieved channel matrix estimation error at the 10^{-3} level.
Significantly outperformed benchmark schemes in transmission performance.
Demonstrated effectiveness of multidimensional feature fusion.
Abstract
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…
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