Speaker adaptive training (SAT) of neural network acoustic models learns models in a way that makes them more suitable for adaptation to test conditions. Conventionally, model-based speaker adaptive training is performed by having a set of speaker dependent parameters that are jointly optimised with speaker independent parameters in order to remove speaker variation. However, this does not scale well if all neural network weights are to be adapted to the speaker. In this paper we formulate speaker adaptive training as a meta-learning task, in which an adaptation process using gradient descent is encoded directly into the training of the model. We compare our approach with test-only adaptation of a standard baseline model and a SAT-LHUC mode...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
Acoustic variability across speakers is one of the challenges of speaker independent speech recognit...
The performance of automatic speech recognition systems degrades rapidly when there is a mismatch b...
Abstract—In acoustic modeling, speaker adaptive training (SAT) has been a long-standing technique fo...
<p>We investigate the concept of speaker adaptive training (SAT) in the context of deep neural netwo...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
In the paper we present two techniques improving the recognition accuracy of multilayer perceptron n...
This paper proposes a differentiable pooling mechanism to perform model-based neural network speaker...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
Adaptive training aims at reducing the influence of speaker, channel and environment variability on...
In this paper we present a novel method for adaptation of a multi-layer perceptron neural network (...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
Acoustic variability across speakers is one of the challenges of speaker independent speech recognit...
The performance of automatic speech recognition systems degrades rapidly when there is a mismatch b...
Abstract—In acoustic modeling, speaker adaptive training (SAT) has been a long-standing technique fo...
<p>We investigate the concept of speaker adaptive training (SAT) in the context of deep neural netwo...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
In the paper we present two techniques improving the recognition accuracy of multilayer perceptron n...
This paper proposes a differentiable pooling mechanism to perform model-based neural network speaker...
This paper proposes a simple yet effective model-based neural network speaker adaptation technique t...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
Adaptive training aims at reducing the influence of speaker, channel and environment variability on...
In this paper we present a novel method for adaptation of a multi-layer perceptron neural network (...
Though speaker adaptation has long been an importing topic in automatic speech recognition, the brea...
The speaker-dependent HMM-based recognizers gives lower word error rates in comparison with the corr...
W ork carried out as visiting student at M SR Asia. This paper presents a 3-stage adaptation framewo...
In this paper, we propose a new fast speaker adaptation method for the hybrid NN-HMM speech recognit...
Acoustic variability across speakers is one of the challenges of speaker independent speech recognit...