Xuerong Cui, Bin Yuan, Juan Li, Binbin Jiang, Shibao Li, Jianhang Liu
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引用次数: 0
摘要
在这封信中,我们提出了一种结合图像超分辨率(SR)的水下声道估计方法,并将其命名为 FCDnNet。FCDnNet 由两部分组成:快速超分辨率卷积神经网络(FSRCNN)和复杂去噪卷积神经网络(C-DnCNN)。FSRCNN 提取先导信道的有效特征,使用解卷积实现 SR 重构,并生成预估计信道矩阵。C-DnCNN 保留了信道实部和虚部的相对位置,充分利用了振幅和相位信息,能更有效地从预估计矩阵中恢复信道矩阵。实验结果表明,FCDnNet 的归一化均方误差(NMSE)比其他基于深度学习的信道估计方法至少低 13.1-65.2。
Channel estimation for underwater acoustic OFDM based on super‐resolution network
In this letter, we propose a method for underwater acoustic channel estimation that combines image super‐resolution (SR) and is named FCDnNet. FCDnNet consists of two parts: Fast Super Resolution Convolutional Neural Network (FSRCNN) and Complex Denoising Convolutional Neural Network (C‐DnCNN). FSRCNN extracts effective features of pilot channels, uses deconvolution to achieve SR reconstruction, and generates a pre‐estimation channel matrix. C‐DnCNN preserves the relative positions of the real and imaginary parts of the channel, fully utilizing amplitude and phase information, and can more effectively recover the channel matrix from the pre‐estimation matrix. Experimental results show that the normalized mean square error (NMSE) of FCDnNet is at least 13.1–65.2 lower than other channel estimation methods based on deep learning.