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2D Empirical Transforms. Wavelets, Ridgelets and Curvelets revisited

SIAM Journal of Imaging Sciences (SIAM J. Imaging Sci.), 2014
Jerome Gilles
Stanley Osher
Main:31 Pages
24 Figures
Bibliography:3 Pages
1 Tables
Abstract

A recently developed new approach, called ``Empirical Wavelet Transform'', aims to build 1D adaptive wavelet frames accordingly to the analyzed signal. In this paper, we present several extensions of this approach to 2D signals (images). We revisit some well-known transforms (tensor wavelets, Littlewood-Paley wavelets, ridgelets and curvelets) and show that it is possible to build their empirical counterpart. We prove that such constructions lead to different adaptive frames which show some promising properties for image analysis and processing.

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