Blind Spectrum Sensing with low rank and sparse model

Xushan Chen, Xiongwei Zhang, Jibin Yang, Meng Sun, Xinwei Zhang
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引用次数: 1

Abstract

Spectrum Sensing is a cornerstone in cognitive radio which can detect the spectrum holes in order to raise spectrum utilization ratio. Traditional spectrum sensing detectors depend on some prior information or are restricted by low signal-to-noise ratio and computation complexity in practical application. A GoDec based spectrum sensing detector is proposed by combining covariance based method with low rank and sparse model theory. The proposed detector divides the received signal into two segments of equal length, and then decomposes the covariance matrix respectively by GoDec decomposition. The primary user exists if the difference between the low rank matrices is lower than a predefined threshold. Simulation results show that the proposed detector has high detection probability to detect primary signals with SNR as low as -14dB.
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基于低秩稀疏模型的盲光谱感知
频谱感知是认知无线电的基础,它能够检测到频谱漏洞,从而提高频谱利用率。传统的频谱传感检测器在实际应用中依赖于一定的先验信息或受低信噪比和计算复杂度的限制。将基于协方差的方法与低秩稀疏模型理论相结合,提出了一种基于GoDec的频谱感知检测器。该检测器将接收到的信号分成等长的两段,然后分别采用GoDec分解对协方差矩阵进行分解。如果低秩矩阵之间的差值小于预定义的阈值,则存在主用户。仿真结果表明,该检测器具有较高的检测概率,可以检测到信噪比低至-14dB的初级信号。
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