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A Class of Multivariate Denoising Algorithms Based on Synchrosqueezing

机译:一类基于同步压缩的多元降噪算法

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摘要

Univariate thresholding techniques based on high resolution time-frequency algorithms, such as the synchrosqueezing transform, have emerged as important tools in removing noise from real world data. Low cost multichannel sensor technology has highlighted the need for direct multivariate denoising, and to this end, we introduce a class of multivariate denoising techniques based on the synchrosqueezing transform. This is achieved by partitioning the time-frequency domain so as to identify a set of modulated oscillations common to the constituent data channels within multivariate data, and by employing a modified universal threshold in order to remove noise components, while retaining signal components of interest. This principle is used to introduce both the wavelet and Fourier based multivariate synchrosqueezing denoising algorithms. The performance of the proposed multivariate denoising algorithm is illustrated on both synthetic and real world data.
机译:基于高分辨率时频算法的单变量阈值技术(例如同步压缩变换)已成为从现实世界数据中去除噪声的重要工具。低成本多通道传感器技术突显了直接多元降噪的需求,为此,我们介绍了一种基于同步压缩变换的多元降噪技术。这可以通过对时频域进行划分,以便识别多变量数据中的组成数据通道共有的一组调制振荡,并通过采用修改后的通用阈值以去除噪声分量,同时保留感兴趣的信号分量来实现。该原理用于介绍基于小波和傅立叶的多元同步压缩降噪算法。所提出的多元去噪算法的性能在合成数据和真实数据上均得到了说明。

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