Abstract

Recently, deep learned enabled end-to-end communication systems have been developed to merge all physical layer blocks in the traditional communication systems, which make joint transceiver optimization possible. Powered by deep learning, natural language processing has achieved great success in analyzing and understanding a large amount of language texts. Inspired by research results in both areas, we aim to provide a new view on communication systems from the semantic level. Particularly, we propose a deep learning based semantic communication system, named DeepSC, for text transmission. Based on the Transformer, the DeepSC aims at maximizing the system capacity and minimizing the semantic errors by recovering the meaning of sentences, rather than bit- or symbol-errors in traditional communications. Moreover, transfer learning is used to ensure the DeepSC applicable to different communication environments and to accelerate the model training process. To justify the performance of semantic communications accurately, we also initialize a new metric, named sentence similarity. Compared with the traditional communication system without considering semantic information exchange, the proposed DeepSC is more robust to channel variation and is able to achieve better performance, especially in the low signal-to-noise (SNR) regime, as demonstrated by the extensive simulation results.

Keywords

Computer scienceCommunications systemArtificial intelligenceDeep learningNatural language processingSentenceSemantic similarityMachine learningSpeech recognitionTelecommunications

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Publication Info

Year
2021
Type
article
Volume
69
Pages
2663-2675
Citations
1062
Access
Closed

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Huiqiang Xie, Zhijin Qin, Geoffrey Ye Li et al. (2021). Deep Learning Enabled Semantic Communication Systems. IEEE Transactions on Signal Processing , 69 , 2663-2675. https://doi.org/10.1109/tsp.2021.3071210

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DOI
10.1109/tsp.2021.3071210