Frequency estimation with missing measurements under impulsive noise

Hongqing Liu, Dongyan Ding, Yong Li, Yi Zhou
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引用次数: 2

Abstract

The frequency recovery problem from impulsive noise corrupted signal with missing data is considered. The main motive of this work is to explore the signal sparse property that is proven to be advantageous if it is properly utilized. To that end, first, a transformation domain, namely frequency domain, is constructed in which multiple sinusoids have a sparse representation. Second, the data missing problem is reformulated in a way that is represented by a sparse vector containing only zeros and ones. Third, thanks to the exciting finding of the nearly-sparse property of the impulsive noise in the time domain, the noise reduction can be designed as well to explore its sparsity to cancel the noise. By utilizing the sparsity from the frequency, missing pattern and impulsive noise, a joint estimation approach is designed that allows simultaneously to perform frequency and missing pattern estimation under the impulsive noise. Numerical studies demonstrate that joint estimate offers robust and consistent results compared to non-joint estimate (without noise reduction).
脉冲噪声下测量缺失的频率估计
研究了丢失数据的脉冲噪声干扰信号的频率恢复问题。这项工作的主要动机是探索被证明是有利的信号稀疏性质,如果它被适当地利用。为此,首先构造一个变换域,即频域,其中多个正弦波具有稀疏表示。其次,用只包含0和1的稀疏向量来表示数据缺失问题。第三,由于脉冲噪声在时域上的近稀疏特性的令人兴奋的发现,也可以设计降噪来探索其稀疏性以消除噪声。利用频率、缺失方向图和脉冲噪声的稀疏性,设计了一种能在脉冲噪声下同时进行频率和缺失方向图估计的联合估计方法。数值研究表明,与非联合估计(无降噪)相比,联合估计具有鲁棒性和一致性。
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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