基于Kronecker积滤波器的最小方差无失真响应谱估计

Xianrui Wang, J. Benesty, Gongping Huang, Jingdong Chen
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引用次数: 0

摘要

光谱估计在广泛的应用中具有重要的实际意义。提出了一种基于Kronecker积的最小方差无失真响应(MVDR)谱估计方法。利用傅里叶向量的特殊结构,我们把它分解成两个短向量的克罗内克积。然后,我们在相同的结构下设计了光谱估计滤波器,即两个滤波器的Kronecker积。因此,将传统的MVDR频谱问题转化为估计两个更短长度的滤波器的问题。由于需要估计的参数要少得多,因此所提出的方法能够获得比传统方法更好的性能,特别是当可用信号样本数量较少时。本文还介绍了对交叉谱和相干函数估计的推广。
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A Minimum Variance Distortionless Response Spectral Estimator with Kronecker Product Filters
Spectral estimation is of significant practical importance in a wide range of applications. This paper proposes a minimum variance distortionless response (MVDR) method for spectral estimation based on the Kronecker product. Taking advantage of the particular structure of the Fourier vector, we decompose it as a Kronecker product of two shorter vectors. Then, we design the spectral estimation filters under the same structure, i.e., as a Kronecker product of two filters. Consequently, the conventional MVDR spectrum problem is transformed to one of estimating two filters of much shorter lengths. Since it has much fewer parameters to estimate, the proposed method is able to achieve better performance than its conventional counterpart, particularly when the number of available signal samples is small. Also presented in this paper is the generalization to the estimation of the cross-spectrum and coherence function.
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