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A Robust Deep Learning Enabled Semantic Communication System for Text

Xiang Peng, Zhijin Qin, Danlan Huang, Xiaoming Tao, Jianhua Lü, Guangyi Liu, Chengkang Pan

2022GLOBECOM 2022 - 2022 IEEE Global Communications Conference86 citationsDOI

Abstract

With the advent of the 6G era, the concept of semantic communication has attracted increasing attention. Compared with conventional communication systems, semantic communication systems are not only affected by physical noise existing in the wireless communication environment, e.g., additional white Gaussian noise, but also by semantic noise due to the source and the nature of deep learning-based systems. In this paper, we elaborate on the mechanism of semantic noise. In particular, we categorize semantic noise into two categories: literal semantic noise and adversarial semantic noise. The former is caused by written errors or expression ambiguity, while the latter is caused by perturbations or attacks added to the embedding layer via the semantic channel. To prevent semantic noise from influencing semantic communication systems, we present a robust deep learning enabled semantic communication system (R-DeepSC) that leverages a calibrated self-attention mechanism and adversarial training to tackle semantic noise. Compared with baseline models that only consider physical noise for text transmission, the proposed R-DeepSC achieves remarkable performance in dealing with semantic noise under different signal-to-noise ratios.

Topics & Concepts

Computer scienceSemantic computingNoise (video)Artificial intelligenceSemantic gridNatural language processingSpeech recognitionSemantic WebImage (mathematics)Digital Media Forensic DetectionSpeech Recognition and SynthesisWireless Signal Modulation Classification
A Robust Deep Learning Enabled Semantic Communication System for Text | Litcius