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Compressive spectrum sensing with spectral priors for cognitive radar

机译:具有认知雷达的光谱前导谱的压缩频谱感测

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This paper proposes a new sparse spectrum sensing framework for cognitive radars, by combining the ideas of coprime sampling and atomic norm line spectrum estimation. Cognitive radars need to scan a large frequency band to detect presence of other radio users and find available spectral holes for opportunistic transmission. This necessitates the use of expensive A/D converters operating at very high sampling rates. Coprime sampling can be highly effective in such a scenario, since it allows spectrum sensing at significantly lower sub-Nyquist rates. This paper demonstrates how coprime sampling can enable sparse spectrum sensing at sub-Nyquist rates by using an atomic-norm minimization based reconstruction framework. Traditional atomic norm based methods, when used with coprime sensing, can lead to false detection of spectral lines, especially in presence of noise and limited data. By exploiting spectral priors (such as partial knowledge of available holes) available to the cognitive radar, coprime sampling and atomic norm based spectrum sensing can successfully avoid such false detection and enable efficient spectrum sensing at sub-Nyquist rates.
机译:本文提出了一种新的稀疏频谱传感框架,用于认知雷达,通过组合共同采样和原子规范线谱估计的思路。认知雷达需要扫描大频带以检测其他无线电用户的存在,并找到可用的频谱孔,用于机会传输。这需要使用以非常高的采样率运行的昂贵A / D转换器。 CopRime采样可以在这种情况下非常有效,因为它允许在显着降低的子奈奎斯特率下频谱感测。本文演示了通过基于原子标量的重建框架,通过基于原子常态最小化可以在子奈奎斯特速率下实现稀疏频谱感测。基于传统的原子标准的方法,当与共同传感一起使用时,可以导致频谱线的假检测,尤其是存在噪声和有限的数据。通过利用对认知雷达可用的频谱前沿(例如可用孔的部分知识),CopRIME采样和基于原子规范的频谱感测可以成功避免这种错误检测,并在子奈奎斯特速率下实现有效的频谱感测。

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