Band-Limited Gaussian Processes: The Sinc Kernel

09/16/2019
by   Felipe Tobar, et al.
0

We propose a novel class of Gaussian processes (GPs) whose spectra have compact support, meaning that their sample trajectories are almost-surely band limited. As a complement to the growing literature on spectral design of covariance kernels, the core of our proposal is to model power spectral densities through a rectangular function, which results in a kernel based on the sinc function with straightforward extensions to non-centred (around zero frequency) and frequency-varying cases. In addition to its use in regression, the relationship between the sinc kernel and the classic theory is illuminated, in particular, the Shannon-Nyquist theorem is interpreted as posterior reconstruction under the proposed kernel. Additionally, we show that the sinc kernel is instrumental in two fundamental signal processing applications: first, in stereo amplitude modulation, where the non-centred sinc kernel arises naturally. Second, for band-pass filtering, where the proposed kernel allows for a Bayesian treatment that is robust to observation noise and missing data. The developed theory is complemented with illustrative graphic examples and validated experimentally using real-world data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/05/2017

Spectral Mixture Kernels for Multi-Output Gaussian Processes

Early approaches to multiple-output Gaussian processes (MOGPs) relied on...
research
02/18/2022

Nonstationary multi-output Gaussian processes via harmonizable spectral mixtures

Kernel design for Multi-output Gaussian Processes (MOGP) has received in...
research
03/12/2013

Gaussian Processes for Nonlinear Signal Processing

Gaussian processes (GPs) are versatile tools that have been successfully...
research
03/11/2021

The Minecraft Kernel: Modelling correlated Gaussian Processes in the Fourier domain

In the univariate setting, using the kernel spectral representation is a...
research
06/01/2012

Predictive Information Rate in Discrete-time Gaussian Processes

We derive expressions for the predicitive information rate (PIR) for the...
research
09/15/2023

Gaussian Processes with Linear Multiple Kernel: Spectrum Design and Distributed Learning for Multi-Dimensional Data

Gaussian processes (GPs) have emerged as a prominent technique for machi...
research
03/11/2018

Optimal Data-based Kernel Estimation of Evolutionary Spectra

Complex demodulation of evolutionary spectra is formulated as a two-dime...

Please sign up or login with your details

Forgot password? Click here to reset