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Gaussian Source Detection and Spatial Spectral Estimation Using a Coprime Sensor Array With the Min Processor

机译:使用带有最小处理器的互质传感器阵列的高斯源检测和空间光谱估计

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A coprime sensor array (CSA) interleaves two undersampled uniform linear arrays with coprime undersampling factors and has recently found broad applications in signal detection and estimation. CSAs commonly use the product processor by multiplying the scanned responses of two colinear subarrays to estimate the spatial power spectral density (PSD) of the received signal. This paper proposes a new CSA processor, the CSAmin processor, which chooses the minimum between the two CSA subarray periodograms at each bearing to estimate the spatial PSD. The proposed CSAmin processor resolves the CSA subarray spatial aliasing equally well as the product processor. For an extended aperture CSA, the CSAmin reduces the peak sidelobe height and total sidelobe area over the product processor for the same CSA geometry. Moreover, unlike the PSD estimate from the product processor, the PSD estimate from the CSAmin is guaranteed to be positive semidefinite. This paper derives the probability density function, the complementary cumulative distribution function (CCDF, or tail distribution), and the first two moments of the CSAmin PSD estimator in closed form for Gaussian sources in white Gaussian noise. Numerical simulations verify the derived CSAmin statistics and demonstrate that the CSAmin improves the performance over the product processor in detecting narrowband Gaussian sources in the presence of loud interferers and noise. The CSAmin spatial PSD estimate achieves lower variance than the product processor estimate, and keeps the PSD estimate unbiased for white Gaussian processes and asymptotically unbiased for nonwhite Gaussian processes.
机译:互质传感器阵列(CSA)将两个欠采样的均匀线性阵列与互质欠采样因子交织在一起,最近在信号检测和估计中发现了广泛的应用。 CSA通常通过乘以两个共线子阵列的扫描响应来使用乘积处理器,以估计接收信号的空间功率谱密度(PSD)。本文提出了一种新的CSA处理器CSAmin处理器,该处理器在每个方位的两个CSA子阵列周期图之间选择最小值,以估计空间PSD。提出的CSAmin处理器与乘积处理器一样好地解决了CSA子阵列的空间混叠问题。对于扩展孔径的CSA,对于相同的CSA几何形状,CSAmin会降低产品处理器上的峰值旁瓣高度和总旁瓣面积。而且,与来自乘积处理器的PSD估计不同,来自CSAmin的PSD估计被保证为正半定值。本文推导了高斯白噪声源中封闭形式的CSAmin PSD估计量的概率密度函数,互补累积分布函数(CCDF或尾部分布)以及前两个矩。数值模拟验证了推导的CSAmin统计数据,并证明了CSAmin在产品存在较大干扰和噪声的情况下,在检测窄带高斯源方面比产品处理器提高了性能。 CSAmin空间PSD估计获得的乘积低于乘积处理器估计,并且使PSD估计对于白色高斯过程无偏,对于非白色高斯过程保持渐近无偏。

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