变异神经推理增强型文本语义通信系统

Zhang Xi, Yiqian Zhang, Congduan Li, Ma Xiao
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引用次数: 0

摘要

最近,基于深度学习的语义通信受到了广泛关注,许多系统被设计用于传输各种数据源,包括文本、图像和语音等。在努力提高系统性能的同时,许多研究都集中于增强编码器和解码器的结构。然而,这往往忽视了由此导致的模型复杂性的增加,给智能设备带来额外的存储和计算负担。此外,现有工作往往优先考虑显式语义,忽视了隐式语义的潜力。本文的目标是在不修改编码器和解码器结构的情况下,轻松有效地增强接收器的解码能力。我们提出了一种用于文本传输的新型变异神经推理语义通信系统。具体来说,我们在接收器中引入了一个简单而有效的变异神经推理器,用于推理接收到的文本中的潜在语义信息。然后利用这些信息协助解码过程。模拟结果表明,系统性能显著提高,鲁棒性也得到改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variational neural inference enhanced text semantic communication system
Recently, deep learning-based semantic communication has garnered widespread attention, with numerous systems designed for transmitting diverse data sources, including text, image, and speech, etc. While efforts have been directed toward improving system performance, many studies have concentrated on enhancing the structure of the encoder and decoder. However, this often overlooks the resulting increase in model complexity, imposing additional storage and computational burdens on smart devices. Furthermore, existing work tends to prioritize explicit semantics, neglecting the potential of implicit semantics. This paper aims to easily and effectively enhance the receiver's decoding capability without modifying the encoder and decoder structures. We propose a novel semantic communication system with variational neural inference for text transmission. Specifically, we introduce a simple but effective variational neural inferer at the receiver to infer the latent semantic information within the received text. This information is then utilized to assist in the decoding process. The simulation results show a significant enhancement in system performance and improved robustness.
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