Title :
Online Bayesian Inference in Some Time-Frequency Representations of Non-Stationary Processes
Author :
Everitt, Richard Geoffrey ; Andrieu, Cindie ; Davy, Matthieu
Author_Institution :
Dept. of Math. & Stat., Univ. of Reading, Reading, UK
Abstract :
The use of Bayesian inference in the inference of time-frequency representations has, thus far, been limited to offline analysis of signals, using a smoothing spline based model of the time-frequency plane. In this paper we introduce a new framework that allows the routine use of Bayesian inference for online estimation of the time-varying spectral density of a locally stationary Gaussian process. The core of our approach is the use of a likelihood inspired by a local Whittle approximation. This choice, along with the use of a recursive algorithm for non-parametric estimation of the local spectral density, permits the use of a particle filter for estimating the time-varying spectral density online. We provide demonstrations of the algorithm through tracking chirps and the analysis of musical data.
Keywords :
Gaussian processes; approximation theory; inference mechanisms; particle filtering (numerical methods); signal processing; Gaussian process; Whittle approximation; musical data analysis; non stationary processes; online Bayesian inference; online estimation; particle filter; signal offline analysis; smoothing spline based model; time frequency plane; time frequency representations; time varying spectral density; time-varying spectral density; tracking chirps; Approximation methods; Bayes methods; Estimation; Gaussian processes; Monte Carlo methods; Signal processing algorithms; Time-frequency analysis; Bayesian methods; DSP-TFSR; MLR-BAYL; MLR-MUSI; SSP-NSSP; SSP-TRAC; frequency domain analysis EDICS Categories; particle filters; signal processing algorithms; spectrogram;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2280128