在MIMO信道上面向任务的语义通信的端到端学习:一个信息论框架

Chang Cai;Xiaojun Yuan;Ying-Jun Angela Zhang
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引用次数: 0

摘要

本文研究了面向任务的语义通信系统中学习和通信的端到端设计问题。特别地,我们考虑了一个基于无线多输入多输出(MIMO)多址通道的多设备协作边缘推理系统,其中多个设备将提取的特征传输到服务器以执行分类任务。我们将特征编码、MIMO预编码和分类的端到端设计表述为一个条件互信息最大化问题。然而,众所周知,设计和训练一个既能适应任务数据集又能适应不同信道实现的端到端网络是非常困难的。在网络训练方面,我们提出了一种解耦预训练框架,该框架分别训练特征编码器和MIMO预编码器,并在服务器端使用最大后验(MAP)分类器来生成推理结果。特征编码器仅使用任务数据集进行预训练,而MIMO预编码器仅基于信道和噪声分布进行预训练。然而,我们设法使每个单独组件的预训练目标与端到端学习目标保持一致,从而接近端到端学习的性能界限。通过利用解耦的预训练结果进行初始化,可以以最小的训练开销进行E2E学习。在网络架构设计方面,我们开发了两个深度展开预编码网络,有效地将解耦预编码问题的解决方案的领域知识结合起来。在CIFAR-10和ModelNet10数据集上的仿真结果表明,与各种基线相比,本文方法的分类精度显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
End-to-End Learning for Task-Oriented Semantic Communications Over MIMO Channels: An Information-Theoretic Framework
This paper addresses the problem of end-to-end (E2E) design of learning and communication in a task-oriented semantic communication system. In particular, we consider a multi-device cooperative edge inference system over a wireless multiple-input multiple-output (MIMO) multiple access channel, where multiple devices transmit extracted features to a server to perform a classification task. We formulate the E2E design of feature encoding, MIMO precoding, and classification as a conditional mutual information maximization problem. However, it is notoriously difficult to design and train an E2E network that can be adaptive to both the task dataset and different channel realizations. Regarding network training, we propose a decoupled pretraining framework that separately trains the feature encoder and the MIMO precoder, with a maximum a posteriori (MAP) classifier employed at the server to generate the inference result. The feature encoder is pretrained exclusively using the task dataset, while the MIMO precoder is pretrained solely based on the channel and noise distributions. Nevertheless, we manage to align the pretraining objectives of each individual component with the E2E learning objective, so as to approach the performance bound of E2E learning. By leveraging the decoupled pretraining results for initialization, the E2E learning can be conducted with minimal training overhead. Regarding network architecture design, we develop two deep unfolded precoding networks that effectively incorporate the domain knowledge of the solution to the decoupled precoding problem. Simulation results on both the CIFAR-10 and ModelNet10 datasets verify that the proposed method achieves significantly higher classification accuracy compared to various baselines.
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