This work investigates subspace non-parametric models for the task of learning a set of acoustic units from unlabeled speech recordings. We constrain the base-measure of a Dirichlet-Process mixture with a phonetic subspace-estimated from other source languages-to build an educated prior, thereby forcing the learned acoustic units to resemble phones of known source languages. Two types of models are proposed: (i) the Subspace HMM (SHMM) which assumes that the phonetic subspace is the same for every language, (ii) the Hierarchical-Subspace HMM (H-SHMM) which relaxes this assumption and allows to have a language-specific subspace estimated on the unlabeled target data. These models are applied on 3 languages: English, Yoruba and Mboshi and the...
The subspace Gaussian mixture model (SGMM) has been exploited for cross-lingual speech recognition. ...
Most contemporary laboratory recognizers require too much memory to run, and are too slow for mass a...
For over a decade, the Hidden Markov Model (HMM) has been the primary tool used for acoustic modelin...
This work investigates subspace non-parametric models for the task of learning a set of acoustic uni...
Accepted to ICASSP 2018International audienceDeveloping speech technologies for low-resource languag...
The ability to infer linguistic structures from noisy speech streams seems to be an innate human cap...
In this paper, we explore how different acoustic modeling tech-niques can benefit from data in langu...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
It generally takes a long time and requires a large amount of speech data to train hidden Markov mod...
This work is intended to explore the performance of a new set of acoustic model units in speech reco...
Vehicles may be recognized from the sound they make when mov-ing, i.e., from their acoustic signatur...
This paper studies cross-lingual acoustic modeling in the context of subspace Gaussian mixture model...
AbstractRecently, several nonparametric Bayesian models have been proposed to automatically discover...
Automatic speech recognition has matured into a commercially successful technology, enabling voice-b...
Zero-resource speech processing (ZS) systems aim to learn structural representations of speech witho...
The subspace Gaussian mixture model (SGMM) has been exploited for cross-lingual speech recognition. ...
Most contemporary laboratory recognizers require too much memory to run, and are too slow for mass a...
For over a decade, the Hidden Markov Model (HMM) has been the primary tool used for acoustic modelin...
This work investigates subspace non-parametric models for the task of learning a set of acoustic uni...
Accepted to ICASSP 2018International audienceDeveloping speech technologies for low-resource languag...
The ability to infer linguistic structures from noisy speech streams seems to be an innate human cap...
In this paper, we explore how different acoustic modeling tech-niques can benefit from data in langu...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
It generally takes a long time and requires a large amount of speech data to train hidden Markov mod...
This work is intended to explore the performance of a new set of acoustic model units in speech reco...
Vehicles may be recognized from the sound they make when mov-ing, i.e., from their acoustic signatur...
This paper studies cross-lingual acoustic modeling in the context of subspace Gaussian mixture model...
AbstractRecently, several nonparametric Bayesian models have been proposed to automatically discover...
Automatic speech recognition has matured into a commercially successful technology, enabling voice-b...
Zero-resource speech processing (ZS) systems aim to learn structural representations of speech witho...
The subspace Gaussian mixture model (SGMM) has been exploited for cross-lingual speech recognition. ...
Most contemporary laboratory recognizers require too much memory to run, and are too slow for mass a...
For over a decade, the Hidden Markov Model (HMM) has been the primary tool used for acoustic modelin...