AbstractRecently, several nonparametric Bayesian models have been proposed to automatically discover acoustic units in unlabeled data. Most of them are trained using various versions of the Gibbs Sampling (GS) method. In this work, we consider Variational Bayes (VB) as alternative inference process. Even though VB yields an approximate solution of the posterior distribution it can be easily parallelized which makes it more suitable for large database. Results show that, notwithstanding VB inference is an order of magnitude faster, it outperforms GS in terms of accuracy
Many feature enhancement methods make use of probabilistic mod-els of speech and noise in order to i...
For most of the non-Gaussian statistical models, the data being modeled represent strongly structure...
International audienceWe consider the task of separating and classifying individual sound sources mi...
AbstractRecently, several nonparametric Bayesian models have been proposed to automatically discover...
Accepted to ICASSP 2018International audienceDeveloping speech technologies for low-resource languag...
This work investigates subspace non-parametric models for the task of learning a set of acoustic uni...
International audienceAcoustic imaging is an advanced technique for acoustic source localization and...
Automatic speech recognition (ASR) systems usually consist of an acoustic model and a language model...
International audienceAcoustic imaging is a powerful technique for acoustic source localization and ...
In this paper, we propose a Bayesian framework, which constructs shared-state triphone HMMs based on...
International audienceAcoustic imaging is a powerful tool to localize and reconstruct source powers ...
Models dealing directly with the raw acoustic speech signal are an alternative to conventional featu...
We describe the automatic determination of an acoustic model for speech recognition, which is very c...
Děti mají již od útlého věku vrozenou schopnost vyvozovat jazykové znalosti z mluvené řeči - dlouho ...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
Many feature enhancement methods make use of probabilistic mod-els of speech and noise in order to i...
For most of the non-Gaussian statistical models, the data being modeled represent strongly structure...
International audienceWe consider the task of separating and classifying individual sound sources mi...
AbstractRecently, several nonparametric Bayesian models have been proposed to automatically discover...
Accepted to ICASSP 2018International audienceDeveloping speech technologies for low-resource languag...
This work investigates subspace non-parametric models for the task of learning a set of acoustic uni...
International audienceAcoustic imaging is an advanced technique for acoustic source localization and...
Automatic speech recognition (ASR) systems usually consist of an acoustic model and a language model...
International audienceAcoustic imaging is a powerful technique for acoustic source localization and ...
In this paper, we propose a Bayesian framework, which constructs shared-state triphone HMMs based on...
International audienceAcoustic imaging is a powerful tool to localize and reconstruct source powers ...
Models dealing directly with the raw acoustic speech signal are an alternative to conventional featu...
We describe the automatic determination of an acoustic model for speech recognition, which is very c...
Děti mají již od útlého věku vrozenou schopnost vyvozovat jazykové znalosti z mluvené řeči - dlouho ...
International audienceHarmonic sinusoidal models are an essential tool for music audio signal analys...
Many feature enhancement methods make use of probabilistic mod-els of speech and noise in order to i...
For most of the non-Gaussian statistical models, the data being modeled represent strongly structure...
International audienceWe consider the task of separating and classifying individual sound sources mi...