Van Vaerenbergh, Steven
Gaussian Processes for Nonlinear Signal Processing
Pérez-Cruz, Fernando, Van Vaerenbergh, Steven, Murillo-Fuentes, Juan José, Lázaro-Gredilla, Miguel, Santamaria, Ignacio
Gaussian processes (GPs) are versatile tools that have been successfully employed to solve nonlinear estimation problems in machine learning, but that are rarely used in signal processing. In this tutorial, we present GPs for regression as a natural nonlinear extension to optimal Wiener filtering. After establishing their basic formulation, we discuss several important aspects and extensions, including recursive and adaptive algorithms for dealing with non-stationarity, low-complexity solutions, non-Gaussian noise models and classification scenarios. Furthermore, we provide a selection of relevant applications to wireless digital communications.
Overlapping Mixtures of Gaussian Processes for the Data Association Problem
Lázaro-Gredilla, Miguel, Van Vaerenbergh, Steven, Lawrence, Neil
In this work we introduce a mixture of GPs to address the data association problem, i.e. to label a group of observations according to the sources that generated them. Unlike several previously proposed GP mixtures, the novel mixture has the distinct characteristic of using no gating function to determine the association of samples and mixture components. Instead, all the GPs in the mixture are global and samples are clustered following "trajectories" across input space. We use a non-standard variational Bayesian algorithm to efficiently recover sample labels and learn the hyperparameters. We show how multi-object tracking problems can be disambiguated and also explore the characteristics of the model in traditional regression settings.