Conditions for identifiability in sparse spatial spectrum sensing

P. Pal, P. Vaidyanathan
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引用次数: 4

Abstract

Spatial Spectrum estimation is a key technique used in a wide variety of problems arising in signal processing and communication, particularly those employing multiple antennas. In many scenarios such as direction finding using antenna arrays, it is crucial to estimate which directions in space contribute to active sources (indicated by a non zero power). It has been recently shown that if the sources from different directions are statistically uncorrelated, it is possible to identify as many as O(M2) active sources using only M physical antennas. A sparse representation for the spatial spectrum was further exploited to reconstruct the spectrum using convex optimization techniques. In this paper, we consider the situation when there is non zero cross correlation between the sources impinging from different directions. We investigate if, fundamentally, it still possible to identify more sources than the number of physical sensors and what role the cross correlation terms play. Recovery guarantees are developed to ensure uniqueness of the sparse representation for spectrum sensing. They are further extended to establish conditions under which a greedy heuristic, namely the Orthogonal Matching Pursuit algorithm will successfully recover the sparse spectrum. It is shown that in both cases, it is possible to recover support of larger size provided the correlation terms are small compared to the power of the impinging signals.
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稀疏空间频谱感知中可识别性的条件
空间频谱估计是解决信号处理和通信中出现的各种问题的一项关键技术,特别是那些使用多天线的问题。在许多情况下,例如使用天线阵列测向,估计空间中的哪些方向有助于有源(由非零功率表示)至关重要。最近的研究表明,如果来自不同方向的源在统计上不相关,则仅使用M个物理天线就可以识别多达O(M2)个有源。进一步利用空间频谱的稀疏表示,利用凸优化技术重建频谱。本文考虑了不同方向碰撞源之间存在非零互相关的情况。我们调查,如果,从根本上说,它仍然有可能识别更多的来源比物理传感器的数量和相互关系项发挥什么作用。为了保证频谱感知稀疏表示的唯一性,提出了恢复保证。进一步扩展了它们,建立了贪婪启发式算法即正交匹配追踪算法成功恢复稀疏谱的条件。结果表明,在这两种情况下,只要相关项与撞击信号的功率相比较小,就有可能恢复更大尺寸的支持。
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