基于嵌入卷积层的无线信号检测滤波器

Xue Zhou, Zhuo Sun, Hengmiao Wu, Qianqian Wu
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引用次数: 1

摘要

传统的基于深度学习的信号检测方法的性能受到无线信道随机噪声和干扰的挑战,它们通常需要在深度学习模型之前使用先验滤波器来消除干扰。为了解决这一问题,我们引入了一种可嵌入的基于卷积层的滤波器(convbased filter),该滤波器以原始时域信号为输入,可以自适应地学习中心频率和带宽与目标信号兼容的带通滤波器的特性。为了提高学习滤波器的性能,在基于卷积的滤波器之后引入了注意机制,即挤压-激励块(SE-block)。作为一个可嵌入的块,过滤器在深度学习网络中进行端到端训练,没有对原始数据进行明确的假设。对于信号检测的应用,与信号预处理后单独训练的方式相比,将预处理作为块嵌入到深度学习网络中效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embeddable Convolutional layer-based Filter for Wireless Signal Detection
The performance of traditional deep learning-based signal detection methods have been challenged by real world signal impaired by random noise and interferences through wireless channel, they quite often appeal to a prior filter for interference elimination before deep learning model. To deal with the problem, we introduce an embeddable convolutional layer-based filter (Conv-based filter), which takes raw time domain signal as input and can adaptively learn characteristics of the band-pass filter whose center frequency and bandwidth are compatible with the target signal. To enhance the performance of learned filters, the attention mechanism is introduced by using Squeeze-and-Excitation block (SE-block) after Conv-based filters. As an embeddable block, the filter is trained end-to-end in a deep learning network, no explicit assumptions about the raw data are made. For application of signal detection, compared with the way of signal preprocessing and then training separately, embedding the preprocessing as a block into the deep learning network works better.
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