Reduced-Complexity Estimation of FM Instantaneous Parameters via Deep-Learning

Huda Saleem, Zahir M. Hussain
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Abstract

Signal frequency estimation is a fundamental problem in signal processing. Deep learning is a fundamental method to solve this problem. This paper used five deep learning methods and three datasets including different singles Single Tone (ST), Linear- Frequency-Modulated (LFM), and Quadratic-Frequency-Modulated (QFM). This signal is affected by Additive White Gaussian (AWG) noise and Additive Symmetric alpha Stable (SαS) noise. Geometric SNR (GSNR) is used to determine the impulsiveness of noise in a Gaussian and SαS noise mixture. Deep learning methods are Gated Recurrent Unit (GRU), Long Short-Term Memory (LSTM), Bi-Direction Long Short-Term Memory (BiLSTM), and Convolution Neural Network (1D-CNN & 2D-CNN). When compared to a deep learning classifier with few layers to get on high accuracy and complexity reduces for Instantaneous Frequency (IF) estimation, Linear Chirp Rate (LCR) estimation, and Quadratic Chirp Rate (QCR) estimation. IF estimation of ST signals, IF and LCR estimation of LFM signals, and IF, LCR, and QCR estimation of QFM signals. The accuracy of the ST dataset in GRU is 58.09, LSTM is 46.61, BiLSTM is 45.95, 1D-CNN is 51.48, and 2D-CNN is 54.13. The accuracy of the LFM dataset in GRU is 82.89, LSTM is 66.28, BiLSTM is 20%, 1D-CNN is 74.79, and 2D-CNN is 98.26. The accuracy of the QFM dataset in GRU is 78.76, LSTM is 67.8, BiLSTM is 69.91, 1D-CNN is 75.8, and 2D-CNN is 98.2. The results show that 2D-CNN is better than other methods for parameter estimation in LFM signals and QFM signals, and the GRU is better for parameter estimation in ST signals.
基于深度学习的FM瞬时参数的低复杂度估计
信号频率估计是信号处理中的一个基本问题。深度学习是解决这个问题的基本方法。本文采用了五种深度学习方法和三种数据集,包括不同的单音(ST)、线性调频(LFM)和二次调频(QFM)。该信号受加性高斯白噪声(AWG)和加性对称α稳定噪声(s - α s)的影响。几何信噪比(GSNR)用于确定高斯和SαS混合噪声的脉冲性。深度学习方法有门控循环单元(GRU)、长短期记忆(LSTM)、双向长短期记忆(BiLSTM)和卷积神经网络(1D-CNN和2D-CNN)。与具有较少层的深度学习分类器相比,瞬时频率(IF)估计、线性啁啾率(LCR)估计和二次啁啾率(QCR)估计具有较高的精度和降低的复杂性。ST信号的中频估计,LFM信号的中频和LCR估计,QFM信号的中频、LCR和QCR估计。GRU中ST数据集的准确率为58.09,LSTM为46.61,BiLSTM为45.95,1D-CNN为51.48,2D-CNN为54.13。LFM数据集在GRU中的准确率为82.89,LSTM为66.28,BiLSTM为20%,1D-CNN为74.79,2D-CNN为98.26。GRU中QFM数据集的准确率为78.76,LSTM为67.8,BiLSTM为69.91,1D-CNN为75.8,2D-CNN为98.2。结果表明,2D-CNN在LFM信号和QFM信号的参数估计上优于其他方法,GRU在ST信号的参数估计上优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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