论文标题

深度学习启用了语义通信系统

Deep Learning Enabled Semantic Communication Systems

论文作者

Xie, Huiqiang, Qin, Zhijin, Li, Geoffrey Ye, Juang, Biing-Hwang

论文摘要

最近,已经开发了深入的启用启用的端到端(E2E)通信系统,以合并传统通信系统中的所有物理层块,从而使关节收发器优化成为可能。自然语言处理(NLP)由深度学习提供支持,在分析和理解大量语言文本方面取得了巨大的成功。受两个领域的研究结果的启发,我们旨在从语义层面提供有关通信系统的新观点。特别是,我们提出了一个基于深度学习的语义通信系统,名为DeepSc,用于文本传输。基于变压器,DEEPSC的目的是通过恢复句子的含义,而不是传统沟通中的句子或符号误差,旨在最大化系统容量并最大程度地减少语义错误。此外,转移学习用于确保适用于不同通信环境的DEEPSC并加速模型培训过程。为了准确证明语义通信的表现是合理的,我们还初始化了一个新的指标,名为“句子相似性”。与传统的通信系统相比,没有考虑语义信息交换,提出的DEEPSC对通道变化更为强大,并且能够实现更好的性能,尤其是在低信噪比(SNR)方向上,如广泛的仿真结果所证明的那样。

Recently, deep learned enabled end-to-end (E2E) 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 (NLP) has achieved great success in analyzing and understanding large amounts of language texts. Inspired by research results in both areas, we aim to providing 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.

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