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引用次数: 1

摘要

在语义通信系统中,当知道传输的目标时,可以更有效地利用资源,只需要传输完成目标所需的信息。现有的语义通信工作没有研究资源分配。本文以图像分类为目标,研究了一种多天线多子载波系统,用于向多个用户传输图像。我们提出了一种基于深度学习的语义信息感知预编码策略来缓解多用户干扰,该策略将用户的调制符号与估计的信道矩阵一起输入到图神经网络中进行策略学习。为了强调利用语义信息对预编码的影响,我们应用两个卷积神经网络分别学习从每个用户的图像到调制符号的映射,以及从每个用户的接收符号到图像表示的映射。采用全连接神经网络进行图像分类。在对这些神经网络进行联合训练后,学习到的预编码策略以注水的方式运行,分配更多的功率用于传输更强的符号,其中携带了分类的重要信息。仿真结果表明,在信噪比较低、信道估计误差较大、用户数量较大的情况下,所学习的预编码策略在减少传输带宽以达到预期分类精度方面优于现有预编码策略。
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Learning Precoding for Semantic Communications
When knowing the goal of transmission, resources can be used more efficiently in semantic communication systems, where only the information necessary for accomplishing the goal needs to be transmitted. Existing works for semantic commu-nications do not investigate resource allocation. In this paper, we consider a multi-antenna-multi-subcarrier system for trans-mitting images to multiple users, by taking a goal of classifying the images as an example. We propose a semantic information-aware precoding policy to mitigate multi-user interference based on deep learning, where the modulated symbols of the users are input into a graph neural network together with estimated channel matrix for learning the policy. To emphasize the impact of harnessing semantic information on precoding, we apply two convolutional neural networks to learn the mapping from the image of each user to modulated symbols and the mapping from the received symbols of each user to a representation of the image, respectively. A fully-connected neural network is followed for image classification. After training these neural networks jointly, the learned precoding policy operates in a water-filling manner, which allocates more power for transmitting stronger symbols, where the important information for classification is carried. Simulation results show that the learned precoding policy is superior to existing precoding policies in reducing the bandwidth for transmission required to achieve an expected classification accuracy when the signal-to-noise ratio is low, channel estimation error is high, and the number of users is large,
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