A robust semantic text communication system
A robust semantic text communication system
Semantic communication is increasingly viewed as a promising solution to improve the transmission efficiency. However, semantic communications are susceptible not only to physical channel impairments, but also to semantic impairments, which degrade semantic understanding at the receiver and disrupt the associated downstream tasks. Hence, we focus our attention on the robustness of semantic communications against semantic impairments. Specifically, we first categorize textual semantic impairments into three categories based on their sources. Then, we propose a robust deep learning enabled semantic communication system (R-DeepSC) by introducing a semantic corrector for robust semantic encoding so as to facilitate semantic transmission. Moreover, we develop a non-autoregressive version of R-DeepSC, namely NA-RDeepSC, which offers improved inference speed by relying on a non-autoregressive architecture and an adaptive generator embedded into the semantic decoder. NA-RDeepSC performs semantic decoding in parallel, hence reducing the decoding complexity from O(n) to O(1) with a comparable performance to that of R-DeepSC. Our experimental results demonstrate the superior robustness of the proposed R-DeepSC and NA-RDeepSC architectures in eliminating semantic impairments, hence highlighting the significance of this work in advancing the development of robust semantic communications.
11372-11385
Peng, Xiang
e071f632-b611-4a17-a396-c805ef54bf0a
Qin, Zhijin
2a72f636-03c3-4cca-a48f-c7309af6785a
Tao, Xiaoming
6f424518-59ae-47e0-9ca7-e207eeca22fd
Lu, Jianhua
f1a78bd8-87f4-493c-88f0-10eca43029ba
Hanzo, Lajos
66e7266f-3066-4fc0-8391-e000acce71a1
1 April 2024
Peng, Xiang
e071f632-b611-4a17-a396-c805ef54bf0a
Qin, Zhijin
2a72f636-03c3-4cca-a48f-c7309af6785a
Tao, Xiaoming
6f424518-59ae-47e0-9ca7-e207eeca22fd
Lu, Jianhua
f1a78bd8-87f4-493c-88f0-10eca43029ba
Hanzo, Lajos
66e7266f-3066-4fc0-8391-e000acce71a1
Peng, Xiang, Qin, Zhijin, Tao, Xiaoming, Lu, Jianhua and Hanzo, Lajos
(2024)
A robust semantic text communication system.
IEEE Transactions on Wireless Communications, 23 (9), .
(doi:10.1109/TWC.2024.3381950).
Abstract
Semantic communication is increasingly viewed as a promising solution to improve the transmission efficiency. However, semantic communications are susceptible not only to physical channel impairments, but also to semantic impairments, which degrade semantic understanding at the receiver and disrupt the associated downstream tasks. Hence, we focus our attention on the robustness of semantic communications against semantic impairments. Specifically, we first categorize textual semantic impairments into three categories based on their sources. Then, we propose a robust deep learning enabled semantic communication system (R-DeepSC) by introducing a semantic corrector for robust semantic encoding so as to facilitate semantic transmission. Moreover, we develop a non-autoregressive version of R-DeepSC, namely NA-RDeepSC, which offers improved inference speed by relying on a non-autoregressive architecture and an adaptive generator embedded into the semantic decoder. NA-RDeepSC performs semantic decoding in parallel, hence reducing the decoding complexity from O(n) to O(1) with a comparable performance to that of R-DeepSC. Our experimental results demonstrate the superior robustness of the proposed R-DeepSC and NA-RDeepSC architectures in eliminating semantic impairments, hence highlighting the significance of this work in advancing the development of robust semantic communications.
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Accepted/In Press date: 14 March 2024
Published date: 1 April 2024
Identifiers
Local EPrints ID: 496155
URI: http://eprints.soton.ac.uk/id/eprint/496155
ISSN: 1536-1276
PURE UUID: 1628d0f3-a8a7-43e7-a9a0-0c8803651a14
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Date deposited: 05 Dec 2024 17:47
Last modified: 06 Dec 2024 02:33
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Author:
Xiang Peng
Author:
Zhijin Qin
Author:
Xiaoming Tao
Author:
Jianhua Lu
Author:
Lajos Hanzo
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