Compressive line spectrum estimation with clustering and interpolation

Dian Mo, Marco F. Duarte
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引用次数: 4

Abstract

We consider the standard line spectral estimation problem when the number of observed samples is significantly lower than that prescribed by the Nyquist rate. Two families of sparsity-based methods have recently been proposed for this problem. The first one uses an atomic norm minimization algorithm where the atoms correspond to complex exponentials of varying frequencies. The second one defines the sparse coefficient vectors for the signals of interest by designing parametric dictionaries that can be leveraged by sparse approximation algorithms involving clustering and interpolation. This paper compares the performance of these two algorithm families. Experiments show their advantages and disadvantages in terms of precision and complexity.
基于聚类和插值的压缩线谱估计
当观测样本的数量明显低于奈奎斯特率所规定的数量时,我们考虑标准线谱估计问题。针对这个问题,最近提出了两类基于稀疏性的方法。第一个使用原子范数最小化算法其中原子对应于不同频率的复指数。第二种方法通过设计参数字典来定义感兴趣信号的稀疏系数向量,这些参数字典可以被涉及聚类和插值的稀疏逼近算法所利用。本文比较了这两种算法族的性能。实验表明了它们在精度和复杂性方面的优缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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