<p>We investigate the extraction of bottle-neck features (BNFs) for multiple languages without access to manual transcription. Multilingual BNFs are derived from a multi-task learning deep neural network which is trained with unsupervised phoneme-like labels. The unsupervised phoneme-like labels are obtained from language-dependent Dirichlet process Gaussian mixture models separately trained on untranscribed speech of multiple languages.</p
This paper presents the application of Neural Network Bot-tleneck (BN) features in Language Identifi...
Recent research has shown promise in multilingual modeling, demonstrating how a single model is capa...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
We investigate the extraction of bottle-neck features (BNFs) for multiple languages without access t...
AbstractStacked-Bottle-Neck (SBN) feature extraction is a crucial part of modern automatic speech re...
How can we effectively develop speech technology for languages where no transcribed data is availabl...
In this work, we propose several deep neural network architectures that are able to leverage data fr...
In this paper we present our latest investigation on multilingual bottle-neck (BN) features and its ...
<p>The system is for track1 alone. We trained an antoencoder using unsupervised bottleneck features ...
We investigate multilingual modeling in the context of a deep neural network (DNN) – hidden Markov ...
Recently, deep bottleneck features (DBF) extracted from a deep neural network (DNN) containing a nar...
<p>The system is for track1 alone. We trained an antoencoder using unsupervised bottleneck features ...
<p>The system is for track1 alone. We trained an antoencoder using unsupervised bottleneck features...
Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been applied su...
Language recognition systems based on bottleneck features have recently become the state-of-the-art ...
This paper presents the application of Neural Network Bot-tleneck (BN) features in Language Identifi...
Recent research has shown promise in multilingual modeling, demonstrating how a single model is capa...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
We investigate the extraction of bottle-neck features (BNFs) for multiple languages without access t...
AbstractStacked-Bottle-Neck (SBN) feature extraction is a crucial part of modern automatic speech re...
How can we effectively develop speech technology for languages where no transcribed data is availabl...
In this work, we propose several deep neural network architectures that are able to leverage data fr...
In this paper we present our latest investigation on multilingual bottle-neck (BN) features and its ...
<p>The system is for track1 alone. We trained an antoencoder using unsupervised bottleneck features ...
We investigate multilingual modeling in the context of a deep neural network (DNN) – hidden Markov ...
Recently, deep bottleneck features (DBF) extracted from a deep neural network (DNN) containing a nar...
<p>The system is for track1 alone. We trained an antoencoder using unsupervised bottleneck features ...
<p>The system is for track1 alone. We trained an antoencoder using unsupervised bottleneck features...
Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been applied su...
Language recognition systems based on bottleneck features have recently become the state-of-the-art ...
This paper presents the application of Neural Network Bot-tleneck (BN) features in Language Identifi...
Recent research has shown promise in multilingual modeling, demonstrating how a single model is capa...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...