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Convolutional Neural Filtering for Intelligent Communications Signal Processing in Harsh Environments

机译:恶劣环境中智能通信信号处理的卷积神经滤波

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摘要

Aiming at utilizing artificial neural networks to enhance intelligent filtering for interfered wireless communication signal in harsh environments, a new method named convolutional neural filtering is designed and presented in this paper. This method is based on model-driven deep learning princeple, by analyzing the theoretical connection between the filter model and the convolutional neural layer, it attempts to use one-dimensional convolution kernels to learn a matched or bandpass filter. Moreover, the model introduces a kernel-wise attention mechanism between different convolution kernels to selectively emphasize informative filters. The results show that in terms of interference and noise suppression for received wireless signal, the filtering method has highlighted dynamic adaptability to variation of signals and interference, and it also reveals that the performance is affected by the initialization parameters and the number of convolution kernels. Based on this method an embeddable filtering unit fully based on neural network is provided, which can be easily integrated into a deep learning network targeting such as wireless signal detection and recognition applications, avoiding complex preprocessing for end-to-end wireless signal learning.
机译:旨在利用人工神经网络来增强恶劣环境中受干扰无线通信信号的智能过滤,该方法名为在本文中设计和呈现。该方法基于模型驱动的深度学习王子,通过分析滤波器模型和卷积神经层之间的理论连接,它试图使用一维卷积内核来学习匹配或带通滤波器。此外,该模型引入了不同卷积核之间的内核关注机制,以选择性地强调信息滤波器。结果表明,在接收无线信号的干扰和噪声抑制方面,滤波方法突出显示对信号和干扰的变化的动态适应性,并且还揭示了性能受初始化参数和卷积内核数量的影响。基于该方法,提供了一种完全基于神经网络的嵌入过滤单元,其可以容易地集成到诸如无线信号检测和识别应用的深度学习网络靶向中,避免了用于端到端无线信号学习的复杂预处理。

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