TL;DR
This paper explores the mathematical relationship between Gaussian analytic functions and various time-frequency transforms of white noise, revealing new transforms and providing insights for signal filtering techniques based on zeros.
Contribution
It systematically links GAFs with classical and new time-frequency transforms, offering probabilistic insights and practical estimates for finite-dimensional approximations.
Findings
Identified new windowed discrete Fourier transforms mapping white noise to GAFs.
Established a correspondence between transforms and orthogonal polynomial generating functions.
Provided quantitative estimates for finite-dimensional white noise approximations.
Abstract
A family of Gaussian analytic functions (GAFs) has recently been linked to the Gabor transform of white Gaussian noise [Bardenet et al., 2017]. This answered pioneering work by Flandrin [2015], who observed that the zeros of the Gabor transform of white noise had a very regular distribution and proposed filtering algorithms based on the zeros of a spectrogram. The mathematical link with GAFs provides a wealth of probabilistic results to inform the design of such signal processing procedures. In this paper, we study in a systematic way the link between GAFs and a class of time-frequency transforms of Gaussian white noises on Hilbert spaces of signals. Our main observation is a conceptual correspondence between pairs (transform, GAF) and generating functions for classical orthogonal polynomials. This correspondence covers some classical time-frequency transforms, such as the Gabor…
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