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A DNN Architecture for the Detection of Generalized Spatial Modulation Signals

机译:用于检测广义空间调制信号的DNN架构

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In this letter, we consider the problem of signal detection in generalized spatial modulation (GSM) using deep neural networks (DNN). We propose a novel modularized DNN architecture that uses small sub-DNNs to detect the active antennas and complex modulation symbols, instead of using a single large DNN to jointly detect the active antennas and modulation symbols. The main idea is that using small sub-DNNs instead of a single large DNN reduces the required size of the NN and hence requires learning lesser number of parameters. Under the assumption of i.i.d Gaussian noise, the proposed DNN detector achieves a performance very close to that of the maximum likelihood detector. We also analyze the performance of the proposed detector under two practical conditions: i) correlated noise across receive antennas and ii) noise distribution deviating from the standard Gaussian model. The proposed DNN-based detector learns the deviations from the standard model and achieves superior performance compared to that of the conventional maximum likelihood detector.
机译:在这封信中,我们考虑使用深神经网络(DNN)的广义空间调制(GSM)中信号检测问题。我们提出了一种新的模块化DNN架构,该模块化DNN架构使用小的子DNN来检测活动天线和复杂的调制符号,而不是使用单个大DNN来共同检测活动天线和调制符号。主要思想是,使用小子DNN而不是单个大DNN减少了NN所需的大小,因此需要学习较少的参数。在I.I.D高斯噪声的假设下,所提出的DNN检测器实现了非常接近最大似然探测器的性能。我们还在两个实际条件下分析了所提出的探测器的性能:i)接收天线的相关噪声和II)偏离标准高斯模型的噪声分布。所提出的基于DNN的探测器学习与标准模型的偏差,并与传统的最大似然探测器相比实现了卓越的性能。

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