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Deep Residual Learning-Assisted Channel Estimation in Ambient Backscatter Communications

机译:环境反向散射通信中的深度剩余学习辅助信道估计

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摘要

Channel estimation is a challenging problem for realizing efficient ambient backscatter communication (AmBC) systems. In this letter, channel estimation in AmBC is modeled as a denoising problem and a convolutional neural network-based deep residual learning denoiser (CRLD) is developed to directly recover the channel coefficients from the received noisy pilot signals. To simultaneously exploit the spatial and temporal features of the pilot signals, a novel three-dimension (3D) denoising block is specifically designed to facilitate denoising in CRLD. In addition, we provide theoretical analysis to characterize the properties of the proposed CRLD. Simulation results demonstrate that the performance of the proposed method approaches the performance of the optimal minimum mean square error (MMSE) estimator with perfect statistical channel correlation matrix.
机译:信道估计是实现有效的环境反向散射通信(AMBC)系统的具有挑战性问题。在这封信中,AMBC中的信道估计被建模为去噪问题,并且开发了一种基于卷积神经网络的深度剩余学习置位者(CRLD)以直接从接收的嘈杂导频信号恢复信道系数。为了同时利用导频信号的空间和时间特征,一种新颖的三维(3D)去噪块专门设计用于促进CRLD中的去噪。此外,我们提供了理论分析,以表征所提出的CRLD的性质。仿真结果表明,该方法的性能与完美的统计信道相关矩阵接近最佳最小均方误差(MMSE)估计的性能。

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