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Uncertainty principles and optimally sparse wavelet transforms
Institution:1. Department of Mathematical Sciences, Norwegian University of Science and Technology, N-7491 Trondheim, Norway;2. Simula Research Laboratory AS, 1364 Fornebu, Norway;3. Machine Intelligence Department, Simula Metropolitan Center for Digital Engineering, 0167 Oslo, Norway
Abstract:In this paper we introduce a new localization framework for wavelet transforms, such as the 1D wavelet transform and the Shearlet transform. Our goal is to design nonadaptive window functions that promote sparsity in some sense. For that, we introduce a framework for analyzing localization aspects of window functions. Our localization theory diverges from the conventional theory in two ways. First, we distinguish between the group generators, and the operators that measure localization (called observables). Second, we define the uncertainty of a signal transform as a whole, instead of defining the uncertainty of an individual window. We show that the uncertainty of a window function, in the signal space, is closely related to the localization of the reproducing kernel of the wavelet transform, in phase space. As a result, we show that using uncertainty minimizing window functions, results in representations which are optimally sparse in some sense.
Keywords:Continuous wavelet transform  Uncertainty principle  Sparse representation  Group representation
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