Harmonie sinusoidal models are a fundamental tool for audio signal analysis. Bayesian harmonic models guarantee a good resynthesis quality and allow joint use of learnt parameter priors and auditory motivated distortion measures. However inference algorithms based on Monte Carlo sampling are rather slow for realistic data. In this paper, we investigate fast inference algorithms based on approximate factorization of the joint posterior into a product of independent distributions on small subsets of parameters. We discuss the conditions under which these approximations hold true and evaluate their performance experimentally. We suggest how they could be used together with Monte Carlo algorithms for a faster sampling-based inference. © 2006 IE...
In this paper we describe recent advances in harmonic models for musical signal analysis. In particu...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
In this paper, we develop a class of probability models that are potentially useful for various musi...
Harmonie sinusoidal models are a fundamental tool for audio signal analysis. Bayesian harmonic model...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
Harmonic models are a common class of sinusoidal mod-els which are of great interest in speech and m...
In this paper we describe recent advances in harmonic models for musical signal analysis. In particu...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
In this paper, we develop a class of probability models that are potentially useful for various musi...
Harmonie sinusoidal models are a fundamental tool for audio signal analysis. Bayesian harmonic model...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
This technical report is deprecated. Please refer to the following article instead: http://hal.inria...
Harmonic models are a common class of sinusoidal mod-els which are of great interest in speech and m...
In this paper we describe recent advances in harmonic models for musical signal analysis. In particu...
This thesis presents several hierarchical generative Bayesian models of musical signals designed to ...
In this paper, we develop a class of probability models that are potentially useful for various musi...