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Empirical mode decomposition synthesis of fractional processes in 1D- and 2D-space

机译:一维和二维空间中分数过程的经验模式分解合成

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We report here on image texture analysis and on numerical simulation of fractional Brownian textures based on the newly emerged Empirical Mode Decomposition (EMD). EMD introduced by N.E. Huang et al. is a promising tool to non-stationary signal representation as a sum of zero-mean AM-FM components called Intrinsic Mode Functions (IMF). Recent works published, by P. Flandrin et al. relate that, in the case of fractional Gaussian noise (fGn), EMD acts essentially as a dyadic filter bank that can be compared to wavelet decompositions. Moreover, in the context of fGn identification, P. Flandrin et al. show that variance progression across IMFs is related to Hurst exponent H through a scaling law. Starting with these recent results, we propose a new algorithm to generate fGn, and fractional Brownian motion (fBm) of Hurst exponent H from IMFs obtained from EMD of a White noise, i.e. ordinary Gaussian noise (fGn with H= 1/2).
机译:我们在此报告图像纹理分析以及基于新出现的经验模式分解(EMD)的分数布朗纹理的数值模拟。由N.E.黄等。作为一种非平稳信号表示的有前途的工具,它被称为本征模式函数(IMF)的零均值AM-FM分量之和。 P. Flandrin等人发表的最新著作。我们知道,在分数高斯噪声(fGn)的情况下,EMD本质上起着二元滤波器组的作用,可以与小波分解进行比较。此外,在fGn鉴定的背景下,P。Flandrin等人。通过缩放定律表明跨IMF的方差进展与Hurst指数H有关。从这些最新结果开始,我们提出了一种新算法来生成fGn和从白噪声(即普通高斯噪声(fGn,H = 1/2))的IMF获得的IMF产生赫斯特指数H的分数布朗运动(fBm)。

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