Title
Bayesian Blind Identification of Nonlinear Distortion with Memory for Audio Applications
Abstract
Whenever an audio device introduces unwanted nonlinear distortions into the manipulated signal, finding a tractable system to approximately model and estimate such degradations can be instrumental to recover the undistorted audio. This paper approaches such blind estimation task (for which classical identification tools are unsuitable) by bringing into the Bayesian framework a Hammerstein system model: the cascade of a static memoryless nonlinearity with a memory-inducing linear filter, which has been shown to be effective in describing many real systems. By assuming the underlying clean audio signal is autoregressive in short sections, the proposed method identifies the distorting system by simulating, in a Markov-Chain Monte Carlo context, the posterior distribution of the model parameters conditioned on the distorted signal. To deal with the resulting non-standard posterior distribution, a combination of the Metropolis-Hastings (MH) algorithm and the Gibbs Sampling is adopted. MH proposals are based on the Laplace approximation of the posterior distribution thanks to its almost Gaussian shape around modes. A heuristic that forces a broad region of the parameter space to be visited on an occasional basis prevents the Markov Chain from getting stuck around local maxima. A series of experiments with artificially distorted music recordings attests the effectiveness of the proposed algorithm.
Year
DOI
Venue
2016
10.1109/LSP.2016.2525005
IEEE Signal Processing Letters
Keywords
Field
DocType
Bayes methods,Gaussian distribution,Markov processes,Monte Carlo methods,approximation theory,audio equipment,audio recording,audio signal processing,autoregressive processes,estimation theory,filtering theory,Gaussian shape distribution,Gibbs sampling,Hammerstein system model:,Laplace approximation,MH algorithm,Markov-Chain Monte Carlo context,Metropolis-Hastings algorithm,artificial distorted music recording,audio device application,autoregressive analysis,bayesian blind identification,blind estimation task,memory-inducing linear filter,nonlinear distortion,nonstandard posterior distribution,Audio restoration,Bayesian inference,Hammerstein system,MCMC,Nonlinear distortion,nonlinear distortion
Autoregressive model,Audio signal,Markov chain Monte Carlo,Pattern recognition,Linear filter,Markov chain,Posterior probability,Artificial intelligence,Nonlinear distortion,Gibbs sampling,Mathematics
Journal
Volume
Issue
ISSN
23
4
1070-9908
Citations 
PageRank 
References 
3
0.45
4
Authors
3
Name
Order
Citations
PageRank
Flávio R. Avila162.22
Hugo E. T. Carvalho2413.31
Luiz W. P. Biscainho311120.16