In the paper we present two techniques improving the recognition accuracy of multilayer perceptron neural networks (MLP ANN) by means of adopting Speaker Adaptive Training. The use of the MLP ANN, usually in combination with the TRAPS parametrization, includes applications in speech recognition tasks, discriminative features production for GMM-HMM and other. In the first SAT experiments, we used the VTLN as a speaker normalization technique. Moreover, we developed a novel speaker normalization technique called Minimum Error Linear Transform (MELT) that resembles the cMLLR/fMLLR method \cite{gales96variance} with respect to the possible application either on the model or features. We tested these two methods extensively on telephone speech c...
A method for speaker normalization in deep neural network (DNN) based discriminative feature estimat...
This paper introduces bootstrap error estimation for automatic tuning of parameters in combined netw...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
In the paper we present two techniques improving the recognition accuracy of multilayer perceptron n...
In this paper we present a novel method for adaptation of a multi-layer perceptron neural network (...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
In Automatic Speech Recognition (ASR) the non-linear data projection provided by a one hidden layer ...
<p>We investigate the concept of speaker adaptive training (SAT) in the context of deep neural netwo...
This paper addresses the use of discriminative training criteria for Speaker Adaptive Training (SAT)...
We use a multi-layer perceptron (MLP) to transform cep-stral features into features better suited fo...
Abstract—In acoustic modeling, speaker adaptive training (SAT) has been a long-standing technique fo...
This paper examines techniques for speaker normalisation and adaptation that are applied in training...
Speaker adaptive training (SAT) of neural network acoustic models learns models in a way that makes ...
In this work, the speaker normalisation problem is afforded by two different techniques. The first o...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
A method for speaker normalization in deep neural network (DNN) based discriminative feature estimat...
This paper introduces bootstrap error estimation for automatic tuning of parameters in combined netw...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
In the paper we present two techniques improving the recognition accuracy of multilayer perceptron n...
In this paper we present a novel method for adaptation of a multi-layer perceptron neural network (...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
In Automatic Speech Recognition (ASR) the non-linear data projection provided by a one hidden layer ...
<p>We investigate the concept of speaker adaptive training (SAT) in the context of deep neural netwo...
This paper addresses the use of discriminative training criteria for Speaker Adaptive Training (SAT)...
We use a multi-layer perceptron (MLP) to transform cep-stral features into features better suited fo...
Abstract—In acoustic modeling, speaker adaptive training (SAT) has been a long-standing technique fo...
This paper examines techniques for speaker normalisation and adaptation that are applied in training...
Speaker adaptive training (SAT) of neural network acoustic models learns models in a way that makes ...
In this work, the speaker normalisation problem is afforded by two different techniques. The first o...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
A method for speaker normalization in deep neural network (DNN) based discriminative feature estimat...
This paper introduces bootstrap error estimation for automatic tuning of parameters in combined netw...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...