DETRENDING AND DENOISING WITH EMPIRICAL MODE DECOMPOSITIONS (ThuPmSS2)
Author(s) :
Patrick Flandrin (CNRS ENS Lyon, France)
Paulo Gonçalvès (INRIA Rhône-Alpes, France)
Gabriel Rilling (ENS Lyon, France)
Abstract : Empirical Mode Decomposition (EMD) has recently been introduced as a local and fully data-driven technique aimed at decomposing nonstationary multicomponent signals in ``intrinsic" AM-FM contributions. Although the EMD principle is appealing and its implementation easy, performance analysis is difficult since no analytical description of the method is available. We will here report on numerical simulations illustrating the potentialities and limitations of EMD in two signal processing tasks, namely detrending and denoising. In both cases, the idea is to make use of partial reconstructions, the relevant modes being selected on the basis of the statistical properties of modes that have been empirically established.

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