论文标题

基于光谱相关函数的深度学习,光谱传感和信号识别

Spectrum Sensing and Signal Identification with Deep Learning based on Spectral Correlation Function

论文作者

Tekbıyık, Kürşat, Akbunar, Özkan, Ekti, Ali Rıza, Görçin, Ali, Kurt, Güneş Karabulut, Qaraqe, Khalid A.

论文摘要

频谱传感是利用无线光谱稀缺来源的一种手段之一。在本文中,提出了用于无线光谱传感和信号识别的卷积神经网络(CNN)模型,该模型采用光谱相关函数,这是对环固性特性的有效表征。所提出的方法对无需先验信息的无线信号进行了分类,并在标题为case1和case2的两个不同设置中实现。在情况1中,信号被共同感知和分类。在情况2中,传感和分类是按顺序进行的。与经典的光谱传感技术相反,提出的CNN方法不需要统计决策过程,也不需要事先知道信号的不同特征。在细胞频段中测量的空气现实世界信号上测量的方法的实现表明,与文献中可用的深度学习网络相比,与经典传感方法相比,具有重要的性能增长。即使此处的实现在细胞信号上,也可以将所提出的方法扩展到对表现出环固化特征的任何信号的检测和分类。最后,用于验证该方法的基于测量的数据集是为了复制结果和进一步的研究和开发的目的。

Spectrum sensing is one of the means of utilizing the scarce source of wireless spectrum efficiently. In this paper, a convolutional neural network (CNN) model employing spectral correlation function which is an effective characterization of cyclostationarity property, is proposed for wireless spectrum sensing and signal identification. The proposed method classifies wireless signals without a priori information and it is implemented in two different settings entitled CASE1 and CASE2. In CASE1, signals are jointly sensed and classified. In CASE2, sensing and classification are conducted in a sequential manner. In contrary to the classical spectrum sensing techniques, the proposed CNN method does not require a statistical decision process and does not need to know the distinct features of signals beforehand. Implementation of the method on the measured overthe-air real-world signals in cellular bands indicates important performance gains when compared to the signal classifying deep learning networks available in the literature and against classical sensing methods. Even though the implementation herein is over cellular signals, the proposed approach can be extended to the detection and classification of any signal that exhibits cyclostationary features. Finally, the measurement-based dataset which is utilized to validate the method is shared for the purposes of reproduction of the results and further research and development.

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