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Spatial spectral estimation using a coprime sensor array with the min processor

机译:使用带有互感器的互质传感器阵列进行空间光谱估计

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A coprime sensor array (CSA) estimates the spatial power spectral density (PSD) of the observed signal by multiplying one conventionally beamformed subarray scanned response with the complex conjugate of the other. This product processor removes the CSA subarray spatial aliasing ambiguities, but has a peak sidelobe higher than the peak sidelobe of a fully populated uniform linear array (ULA). Moreover, the resulting PSD estimate is not necessarily positive semi-definite. This paper proposes choosing the minimum of the two CSA subarray scanned responses at each bearing to resolve the spatial aliasing ambiguities. The min processor achieves lower peak sidelobe height and total sidelobe area than the product processor and preserves the positive semi-definite property of the PSD. This paper presents closed form expressions for the first two moments of the CSA min PSD estimator. Simulation results show the min processor achieves a lower PSD estimate variance than the product processor while maintaining the same array resolution.
机译:通过将传统上波束成形的子阵列乘以与另一个的复杂共轭乘以一个常规波束形成的子阵列乘以一个常规波束成形的子阵列扫描响应来估计观察信号的空间功率谱密度(PSD)。该产品处理器消除了CSA子阵列空间叠加的含义,但具有高于完全填充的均匀线性阵列(ULA)的峰值侧瓣的峰值旁边。此外,所得到的PSD估计不一定是正半定的。本文提出选择每个轴承扫描的两个CSA子阵列的最小扫描响应,以解决空间锯齿含糊之处。 MIN处理器比产品处理器达到较低的峰侧峰峰值和总侧瓣区域,并保留PSD的正半定性。本文为CSA MIN PSD估计器的前两个瞬间提出了封闭的形式表达式。仿真结果表明,MIN处理器实现比产品处理器的较低PSD估计方差,同时保持相同的阵列分辨率。

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