论文标题

DeepRX Mimo:卷积的MIMO检测,并具有学习的乘法转换

DeepRx MIMO: Convolutional MIMO Detection with Learned Multiplicative Transformations

论文作者

Korpi, Dani, Honkala, Mikko, Huttunen, Janne M. J., Starck, Vesa

论文摘要

最近,已经提出了深度学习作为改善无线电接收器物理层性能的潜在技术。尽管结果有很多令人鼓舞的结果,但大多数作品在多输入和多输出(MIMO)接收器的背景下并未考虑空间多路复用。在本文中,我们提出了一个基于深度学习的MIMO接收器体系结构,该结构由基于重新连接的卷积神经网络(也称为DeepRx)组成,并结合了所谓的转换层,所有这些都经过了训练。我们为转换层提出了两种新颖的替代方法:最大比率结合了基于基于的转换或完全学习的变换。前者更多地依靠专家知识,而后者则利用了学习的乘法层。证明两个提出的转换层都明显胜过传统的基线接收器,尤其是使用稀疏的飞行员配置。据我们所知,这些是一些最早的结果,显示出了全面学习的MIMO接收器的高性能。

Recently, deep learning has been proposed as a potential technique for improving the physical layer performance of radio receivers. Despite the large amount of encouraging results, most works have not considered spatial multiplexing in the context of multiple-input and multiple-output (MIMO) receivers. In this paper, we present a deep learning-based MIMO receiver architecture that consists of a ResNet-based convolutional neural network, also known as DeepRx, combined with a so-called transformation layer, all trained together. We propose two novel alternatives for the transformation layer: a maximal ratio combining-based transformation, or a fully learned transformation. The former relies more on expert knowledge, while the latter utilizes learned multiplicative layers. Both proposed transformation layers are shown to clearly outperform the conventional baseline receiver, especially with sparse pilot configurations. To the best of our knowledge, these are some of the first results showing such high performance for a fully learned MIMO receiver.

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