使用协方差拟合平滑时频估计

Johan Brynolfsson, Johan Sward, A. Jakobsson, M. Hansson
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引用次数: 2

摘要

在本文中,我们引入了一种光滑光谱的时频估计器,允许不规则采样测量。通过假设频谱是分段线性的,形成了时间相关(TD)协方差矩阵的非参数表示。使用这种表示,然后通过求解凸协方差拟合问题来估计时频谱,这也作为副产品,提供了对TD协方差矩阵的增强估计。采用模拟非平稳过程的数值算例表明,与经典的Wigner-Ville分布和平滑谱图相比,该方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smooth time-frequency estimation using covariance fitting
In this paper, we introduce a time-frequency spectral estimator for smooth spectra, allowing for irregularly sampled measurements. A non-parametric representation of the time dependent (TD) covariance matrix is formed by assuming that the spectrum is piecewise linear. Using this representation, the time-frequency spectrum is then estimated by solving a convex covariance fitting problem, which also, as a byproduct, provides an enhanced estimation of the TD covariance matrix. Numerical examples using simulated non-stationary processes show the preferable performance of the proposed method as compared to the classical Wigner-Ville distribution and a smoothed spectrogram.
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