Bayesian inversion approach for ECG denoising

dc.contributor.author Bergamini, Maria Lorena
dc.contributor.author Liberczuk, Sergio Javier
dc.date.accessioned 2022-10-12T15:31:32Z
dc.date.available 2022-10-12T15:31:32Z
dc.date.issued 2019
dc.description.abstract Stochastic or Bayesian filtering is an inverse problem in the sense that from given noisy observations we want to estimate hidden state variables knowing models for states evolution and measurement noises. In the present work we propose a Particle Filter method for denoising ECG signals based on Monte Carlo filter techniques estimating the state (filtered signal value) from noisy observations simulated with different SNRs. We use Mc Sharry dynamical model whose solution trajectories reproduce realistic ECG waves. The improvement in the denoised signal is higher when the SNR in the input signal is lower. Particle Filter method allows any noise distribution to be considered. This property is very interesting for physiological signal processing, where the noise is often complex and non Gaussian.
dc.identifier.citation Bergamini, M.L.; Liberczuk, S.J. (2019). Bayesian inversion approach for ECG denoising. En: MACI : Matemática Aplicada, Computacional e Industrial 7:417-420
dc.identifier.uri https://repositorio.uai.edu.ar/handle/123456789/391
dc.language.iso en
dc.publisher Asociación Argentina de Matemática Aplicada, Computacional e Industrial (ASAMACI)
dc.subject particle filtering
dc.subject bayesian inversion
dc.subject ECG denoising
dc.subject state space ECG model
dc.title Bayesian inversion approach for ECG denoising
dc.type ARTICULO
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