PublishedArticleWe introduce a Bayesian spectral analysis model for one-dimensional signals where the observation noise is assumed to be Student-t distributed, for robustness to outliers, and we estimate the posterior distributions of the Student-t hyperparameters, as well as the amplitudes and phases of the component sinusoids. The integrals required for exact Bayesian inference are intractable, so we use variational approximation. We show that the approximate phase posteriors are Generalised von Mises distributions of order 2 and that their spread increases as the signal to noise ratio decreases. The model is demonstrated against synthetic data, and real GPS and Wolf’s sunspot data
International audienceGaussian time-series models are often specified through their spectral density...
International audienceGaussian time-series models are often specified through their spectral density...
The application of Bayes' Theorem to signal processing provides a consistent framework for proceedin...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
Copyright © 2011 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
Gaussian time-series models are often specified through their spectral density. Such models present ...
Abstract. Gaussian time-series models are often specified through their spec-tral density. Such mode...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
This paper presents a novel methodology to infer parameters of probabilistic models whose output noi...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
This paper presents a novel methodology to infer parameters of probabilistic models whose output noi...
This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Si...
International audienceGaussian time-series models are often specified through their spectral density...
International audienceGaussian time-series models are often specified through their spectral density...
This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Si...
International audienceGaussian time-series models are often specified through their spectral density...
International audienceGaussian time-series models are often specified through their spectral density...
The application of Bayes' Theorem to signal processing provides a consistent framework for proceedin...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
Copyright © 2011 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
Gaussian time-series models are often specified through their spectral density. Such models present ...
Abstract. Gaussian time-series models are often specified through their spec-tral density. Such mode...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
This paper presents a novel methodology to infer parameters of probabilistic models whose output noi...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
This paper presents a novel methodology to infer parameters of probabilistic models whose output noi...
This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Si...
International audienceGaussian time-series models are often specified through their spectral density...
International audienceGaussian time-series models are often specified through their spectral density...
This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Si...
International audienceGaussian time-series models are often specified through their spectral density...
International audienceGaussian time-series models are often specified through their spectral density...
The application of Bayes' Theorem to signal processing provides a consistent framework for proceedin...