论文标题
在环境反向散射通信中进行信号检测的深度转移学习
Deep Transfer Learning for Signal Detection in Ambient Backscatter Communications
论文作者
论文摘要
标签信号检测是环境反向散射通信(AMBC)系统中的关键任务之一。但是,获得完美的渠道状态信息(CSI)具有挑战性且昂贵,这使得AMBC系统患有高误差率(BER)。为了消除通道估计的需求并改善系统性能,在本文中,我们采用了深入的转移学习(DTL)方法来隐式提取频道的特征并直接恢复标签符号。为此,我们开发了一个DTL检测框架,该框架包括离线学习,转移学习和在线检测。具体而言,基于最小误差概率(MEP)标准得出了基于DTL的似然比检验(DTL-LRT)。随后,我们将卷积神经网络(CNN)应用于智能探索样品协方差矩阵的特征,该矩阵的特征有助于用于标记信号检测的样品协方差矩阵的特征。利用CNN在矩阵组中提取数据功能方面的强大能力,该方法能够进一步改善系统性能。另外,当样品数量足够大时,还会得出渐近的显式表达来表征所提出的基于CNN方法的性质。最后,广泛的仿真结果表明,所提出的方法的BER性能与完美CSI的最佳检测方法相当。
Tag signal detection is one of the key tasks in ambient backscatter communication (AmBC) systems. However, obtaining perfect channel state information (CSI) is challenging and costly, which makes AmBC systems suffer from a high bit error rate (BER). To eliminate the requirement of channel estimation and to improve the system performance, in this paper, we adopt a deep transfer learning (DTL) approach to implicitly extract the features of channel and directly recover tag symbols. To this end, we develop a DTL detection framework which consists of offline learning, transfer learning, and online detection. Specifically, a DTL-based likelihood ratio test (DTL-LRT) is derived based on the minimum error probability (MEP) criterion. As a realization of the developed framework, we then apply convolutional neural networks (CNN) to intelligently explore the features of the sample covariance matrix, which facilitates the design of a CNN-based algorithm for tag signal detection. Exploiting the powerful capability of CNN in extracting features of data in the matrix formation, the proposed method is able to further improve the system performance. In addition, an asymptotic explicit expression is also derived to characterize the properties of the proposed CNN-based method when the number of samples is sufficiently large. Finally, extensive simulation results demonstrate that the BER performance of the proposed method is comparable to that of the optimal detection method with perfect CSI.