Data di Pubblicazione:
2020
Abstract:
We investigate properties of some extensions of a class of Fourier-based probability
metrics, originally introduced to study convergence to equilibrium for the solution to the spatially
homogeneous Boltzmann equation. At di¤erence with the original one, the new Fourier-based met-
rics are well-defined also for probability distributions with di¤erent centers of mass, and for discrete
probability measures supported over a regular grid. Among other properties, it is shown that, in the
discrete setting, these new Fourier-based metrics are equivalent either to the Euclidean–Wasserstein
distance W2, or to the Kantorovich–Wasserstein distance W1, with explicit constants of equivalence.
Numerical results then show that in benchmark problems of image processing, Fourier metrics pro-
vide a better runtime with respect to Wasserstein ones.
Tipologia CRIS:
1.1 Articolo in rivista
Elenco autori:
Auricchio, Gennaro; Codegoni, Andrea; Gualandi, Stefano; Toscani, Giuseppe; Veneroni, Marco
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