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Single-Shot Sub-Nyquist RF Signal Reconstruction Based on Deep Learning Network

机译:基于深度学习网络的单次亚奈奎斯特射频信号重构

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Real-time detection of high-frequency RF signals requires sophisticated hardware with large bandwidth and high sampling rates. Existing microwave photonic methods have enabled sub-Nyquist sampling for bandwidth-efficient RF signal detection but fall short in single-shot reconstruction. Here we report a novel single-shot sub-Nyquist RF signal detection method based on a trained deep neural network. In a proof-of-concept demonstration, our system successfully reconstructs high frequency multi-toned RF signals from 5x down-sampled singleshot measurements by utilizing a deep convolutional neural network. The presented approach is a powerful digital accelerator to existing hardware detectors to significantly enhance the detection capability.
机译:高频RF信号的实时检测需要具有大带宽和高采样率的复杂硬件。现有的微波光子方法已启用亚奈奎斯特采样,以实现带宽有效的RF信号检测,但在单次采样重建中却不足。在这里,我们报告一种基于经过训练的深度神经网络的新颖单次亚奈奎斯特射频信号检测方法。在概念验证的演示中,我们的系统利用深度卷积神经网络成功地从5倍下采样的单脉冲测量结果中成功重建了高频多音频RF信号。提出的方法是现有硬件检测器的强大数字加速器,可显着增强检测能力。

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