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On the use of eigenvectors in multi-antenna spectrum sensing with noise variance estimation

机译:关于利用噪声方差估计的多天线谱检测的特征向量

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In this paper, a thorough comparison of multi-antenna spectrum sensing techniques is performed. We considered well known algorithms, such as Energy Detector (ED), eigenvalue based detectors, and an algorithm that uses the eigenvector associated to the largest eigenvalue of the covariance matrix. With the idea of auxiliary noise variance estimation, a hybrid approach for the eigenvector-based method is presented and compared against the hybrid Roy's Largest Root Test and hybrid ED. Performance results are evaluated in terms of Receiver Operating Characteristic (ROC) curves and performance curves, i.e., detection probability as a function of the Signal to Noise Ratio (SNR). It is shown that the the eigenvector-based algorithm and its hybrid variant are able approach the optimal Neyman-Pearson performance.
机译:在本文中,执行多天线谱传感技术的彻底比较。我们考虑了众所周知的算法,例如能量检测器(ED),基于特征值的检测器,以及使用与协方差矩阵的最大特征值相关联的特征向量的算法。随着辅助噪声方差估计的思想,呈现了基于特征向量的方法的混合方法,并与混合罗伊最大的根测试和杂种ED进行比较。在接收器操作特征(ROC)曲线和性能曲线方面评估性能结果,即作为信噪比(SNR)的信号的函数的检测概率。结果表明,基于特征向量的算法及其混合变量能够接近最佳的Neyman-Pearson性能。

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