The Local Rényi Entropy Based Shrinkage Algorithm for Sparse TFD Reconstruction

Vedran Jurdana, I. Volaric, V. Sucic
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引用次数: 4

Abstract

Observing a non-stationary signal with the time and frequency representation being mutually exclusive often does not provide enough information. Thus, the joint time-frequency distribution (TFD) is used as a convenient and powerful tool for analysis of such signals. Although TFD overcomes many signal representation limitations, it also introduces additional challenges. The removal of artefacts, also called the cross-terms, while maintaining a high concentration of the signal components (auto-terms) is the main problem of the time-frequency (TF) signal analysis. Among different approaches of solving this problem, in this paper we are investigating the advantages of the TFD sparsity, that is, the fact that the energy is accumulated around the instantaneous frequency law of the signal components. In this paper, we present a sparse TFD reconstruction algorithm based on the iterative shrinkage algorithm. The shrinkage is performed independently for each TFD time-and frequency-slice by taking advantage obtained from the short-term and the narrow-band Rényi entropy. Using the TFD concentration measure and reconstruction algorithm execution time, the obtained results have been compared to the state-of-the-art sparse reconstruction algorithms.
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稀疏TFD重构的局部rsamnyi熵收缩算法
观察时间和频率表示相互排斥的非平稳信号通常不能提供足够的信息。因此,联合时频分布(TFD)是一种方便而有力的分析此类信号的工具。虽然TFD克服了许多信号表示的限制,但它也带来了额外的挑战。去除伪影,也称为交叉项,同时保持信号成分(自动项)的高度集中是时频信号分析的主要问题。在解决这一问题的不同方法中,本文研究了TFD稀疏性的优点,即能量是围绕信号分量的瞬时频率规律积累的。本文提出了一种基于迭代收缩算法的稀疏TFD重建算法。利用从短期和窄带r尼米熵中获得的优势,对每个TFD时间和频率片独立执行收缩。利用TFD浓度度量和重建算法的执行时间,将得到的结果与目前最先进的稀疏重建算法进行了比较。
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