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Denoising Dolphin Click Series in the Presence of Tonals, using Singular Spectrum Analysis and Higher Order Statistics

机译:去噪Dolphin在存在调音时,使用奇异频谱分析和更高阶统计

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We examine the use of Singular Spectrum Analysis (SSA) technique as an alternative technique to using standard wavelet shrinkage schemes for the purpose of de-noising mixtures of tonals, transients and Gaussian noise. Wavelet schemes require a calculation of a threshold to determine which components are taken to be signal and noise. If the noise component is Gaussian, then threshold can be determined by using an appropriate estimator. However, in the presence of strong tonal content the Gaussian threshold estimators do not give optimal performance. One method is to iteratively shift the threshold until some performance criterion has been maximized. However this frequently leads to over de-noising this time series. Since the wavelet basis is chosen to best represent the signal of interest, over de-noising can cause artifacts to appear similar to the signal of interest. In most applications this can not be tolerated. SSA has advantages in that the basis of decomposition is derived from the time series itself. So-called Empirical Orthogonal Functions (EOFs) are derived from a lag matrix created from the time series. Singular Value Decomposition (SVD) is then used to decompose a time series into a number of time series components. In the case of signal separation or de-noising the time series components can be combined by using their statistical properties. We examine the use of higher order statistics, to group components into tonals, transient, and Gaussian noise.
机译:我们研究使用奇异频谱分析(SSA)技术作为使用标准小波收缩方案的替代技术,以便在调音,瞬变和高斯噪声的去噪混合物的目的。小波方案需要计算阈值以确定将哪些组件被视为信号和噪声。如果噪声分量是高斯,则可以通过使用适当的估计器来确定阈值。然而,在强大的色调含量存在下,高斯阈值估计器不会提供最佳性能。一种方法是迭代地移动阈值,直到一些性能标准最大化。然而,这次经常导致这次序列的过度通知。由于选择小波基于以最佳代表感兴趣的信号,因此过度通知会导致伪像与感兴趣的信号类似。在大多数应用中,这不能容忍。 SSA具有优势,原状是分解的基础源自时间序列本身。所谓的经验正交功能(EOFS)源自从时间序列创建的滞后矩阵。然后使用奇异值分解(SVD)将时间序列分解为多个时间序列组件。在信号分离或去噪的情况下,可以通过使用它们的统计特性来组合时间序列组分。我们检查使用更高阶统计数据,将组件分组到音调,瞬态和高斯噪声中。

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