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Tensor-Based Spatial Smoothing (TB-SS) Using Multiple Snapshots

机译:使用多个快照的基于张量的空间平滑(TB-SS)

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Tensor-based spatial smoothing (TB-SS) is a preprocessing technique for subspace-based parameter estimation of damped and undamped harmonics. In TB-SS, multichannel data is packed into a measurement tensor. We propose a tensor-based signal subspace estimation scheme that exploits the multidimensional invariance property exhibited by the highly structured measurement tensor. In the presence of noise, a tensor-based subspace estimate obtained via TB-SS is a better estimate of the desired signal subspace than the subspace estimate obtained by, for example, the singular value decomposition of a spatially smoothed matrix or a multilinear algebra approach reported in the literature. Thus, TB-SS in conjunction with subspace-based parameter estimation schemes performs significantly better than subspace-based parameter estimation algorithms applied to the existing matrix-based subspace estimate. Another advantage of TB-SS over the conventional SS is that TB-SS is insensitive to changes in the number of samples per subarray provided that the number of subarrays is greater than the number of harmonics. In this paper, we present, as an example, TB-SS in conjunction with ESPRIT-type algorithms for the parameter estimation of one-dimensional (1-D) damped and undamped harmonics. A closed form expression of the stochastic Cramér-Rao bound (CRB) for the 1-D damped harmonic retrieval problem is also derived.
机译:基于张量的空间平滑(TB-SS)是一种用于基于子空间的阻尼和非阻尼谐波参数估计的预处理技术。在TB-SS中,多通道数据打包到测量张量中。我们提出了一种基于张量的信号子空间估计方案,该方案利用了高度结构化的测量张量所展现的多维不变性。在存在噪声的情况下,与通过例如空间平滑矩阵的奇异值分解或多线性代数方法获得的子空间估计相比,通过TB-SS获得的基于张量的子空间估计是所需信号子空间的更好估计文献报道。因此,TB-SS与基于子空间的参数估计方案相结合的性能明显优于应用于现有基于矩阵的子空间估计的基于子空间的参数估计算法。 TB-SS相对于常规SS的另一个优点是,如果子阵列的数量大于谐波数量,则TB-SS对每个子阵列的样本数量的变化不敏感。在本文中,我们以TB-SS与ESPRIT型算法为例,介绍一维(1-D)阻尼和无阻尼谐波的参数估计。还推导了一维阻尼谐波检索问题的随机Cramér-Rao界(CRB)的闭式表达式。

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