Compressed spectrum sensing in the presence of interference: Comparison of sparse recovery strategies

E. Lagunas, M. Nájar
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引用次数: 3

Abstract

Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models contaminated with noise (either bounded noise or Gaussian with known power). In practical Cognitive Radio (CR) networks, primary users must be detected even in the presence of low-regulated transmissions from unlicensed systems, which cannot be taken into account in the CS model because of their non-regulated nature. In [1], the authors proposed an overcomplete dictionary that contains tuned spectral shapes of the primary user to sparsely represent the primary users' spectral support, thus allowing all frequency location hypothesis to be jointly evaluated in a global unified optimization framework. Extraction of the primary user frequency locations is then performed based on sparse signal recovery algorithms. Here, we compare different sparse reconstruction strategies and we show through simulation results the link between the interference rejection capabilities and the positive semidefinite character of the residual autocorrelation matrix.
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存在干扰的压缩频谱感知:稀疏恢复策略的比较
现有的稀疏频谱压缩感知(CS)方法到目前为止都假定模型被噪声污染(有界噪声或已知功率的高斯噪声)。在实际的认知无线电(CR)网络中,即使存在来自未授权系统的低管制传输,也必须检测到主要用户,这在CS模型中不能考虑到,因为它们的非管制性质。在[1]中,作者提出了一个包含主用户的调谐频谱形状的过完备字典,以稀疏地表示主用户的频谱支持度,从而允许在全局统一的优化框架中联合评估所有频率定位假设。然后基于稀疏信号恢复算法提取主要用户频率位置。在此,我们比较了不同的稀疏重建策略,并通过仿真结果显示了干扰抑制能力与残差自相关矩阵的正半确定特性之间的联系。
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