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Higher-Order SVD-Based Subspace Estimation to Improve the Parameter Estimation Accuracy in Multidimensional Harmonic Retrieval Problems

机译:基于高阶SVD的子空间估计可提高多维谐波检索问题中的参数估计精度

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摘要

Multidimensional harmonic retrieval problems are encountered in a variety of signal processing applications including radar, sonar, communications, medical imaging, and the estimation of the parameters of the dominant multipath components from MIMO channel measurements. $R$-dimensional subspace-based methods, such as $R$-D Unitary ESPRIT, $R$-D RARE, or $R$ -D MUSIC, are frequently used for this task. Since the measurement data is multidimensional, current approaches require stacking the dimensions into one highly structured matrix. However, in the conventional subspace estimation step, e.g., via an SVD of the latter matrix, this structure is not exploited. In this paper, we define a measurement tensor and estimate the signal subspace through a higher-order SVD. This allows us to exploit the structure inherent in the measurement data already in the first step of the algorithm which leads to better estimates of the signal subspace. We show how the concepts of forward-backward averaging and the mapping of centro-Hermitian matrices to real-valued matrices of the same size can be extended to tensors. As examples, we develop the $R$-D standard Tensor-ESPRIT and the $R$-D Unitary Tensor-ESPRIT algorithms. However, these new concepts can be applied to any multidimensional subspace-based parameter estimation scheme. Significant improvements of the resulting parameter estimation accuracy are achieved if there is at least one of the $R$ dimensions, which possesses a number of sensors that is larger than the number of sources. This can already be observed in the two-dimensional case.
机译:在多种信号处理应用中会遇到多维谐波检索问题,包括雷达,声纳,通信,医学成像,以及根据MIMO信道测量来估算主要多径分量的参数。基于$ R $维子空间的方法(例如$ R $ -D单一ESPRIT,$ R $ -D RARE或$ R $ -D MUSIC)经常用于此任务。由于测量数据是多维的,因此,当前的方法需要将尺寸堆叠到一个高度结构化的矩阵中。但是,在常规的子空间估计步骤中,例如,经由后一个矩阵的SVD,未利用该结构。在本文中,我们定义了一个测量张量,并通过一个高阶SVD估计了信号子空间。这使我们能够利用算法第一步中已经存在于测量数据中的固有结构,从而更好地估计信号子空间。我们展示了向前-向后平均的概念以及向中心-Hermitian矩阵到相同大小的实值矩阵的映射可以扩展到张量。作为示例,我们开发了$ R $ -D标准Tensor-ESPRIT和$ R $ -D单一Tensor-ESPRIT算法。但是,这些新概念可以应用于任何基于多维子空间的参数估计方案。如果$ R $维度中的至少一个维度具有大于源数的多个传感器,则可以实现对所得参数估计精度的显着改善。在二维情况下已经可以观察到这一点。

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