Variational Source-Channel Coding for Semantic Communication
Yulong Feng, Jing Xu, Liujun Hu, Guanghui Yu, Xiangyang Duan

TL;DR
This paper introduces a Variational Source-Channel Coding (VSCC) approach for semantic communication, integrating AI principles with communication strategies to improve semantic transmission and interpretability over traditional auto-encoder models.
Contribution
The paper proposes a novel VSCC method that incorporates data distortion theory and variational inference, enhancing semantic communication performance and interpretability.
Findings
VSCC outperforms AE in semantic feature capture.
VSCC demonstrates stronger semantic transmission capabilities.
VSCC offers better interpretability compared to VAE.
Abstract
Semantic communication technology emerges as a pivotal bridge connecting AI with classical communication. The current semantic communication systems are generally modeled as an Auto-Encoder (AE). AE lacks a deep integration of AI principles with communication strategies due to its inability to effectively capture channel dynamics. This gap makes it difficult to justify the need for joint source-channel coding (JSCC) and to explain why performance improves. This paper begins by exploring lossless and lossy communication, highlighting that the inclusion of data distortion distinguishes semantic communication from classical communication. It breaks the conditions for the separation theorem to hold and explains why the amount of data transferred by semantic communication is less. Therefore, employing JSCC becomes imperative for achieving optimal semantic communication. Moreover, a…
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Taxonomy
TopicsAdvanced Data Compression Techniques · Error Correcting Code Techniques · Wireless Communication Security Techniques
MethodsAutoencoders · Variational Inference
