Adaptation to speaker variations is an essential component of speech recognition systems. One common approach to adapting deep neural network (DNN) acoustic models is to perform global constrained maximum likelihood linear regression (CMLLR) at some point of the systems. Using CMLLR (or more generally, generative approaches) is advantageous especially in unsupervised adaptation scenarios with high baseline error rates. On the other hand, as the DNNs are less sensitive to the increase in the input dimensionality than GMMs, it is becoming more popular to use rich speech representations, such as log mel-filter bank channel outputs, instead of conventional low-dimensional feature vectors, such as MFCCs and PLP coefficients. This work discusses ...
Recently, deep neural networks (DNNs) have outperformed traditional acoustic models on a variety of ...
International audienceIn this paper we investigate GMM-derived features recentlyintroduced for adapt...
Recent progress in acoustic modeling with deep neural network has significantly improved the perform...
Adaptation to speaker variations is an essential component of speech recognition systems. One common...
Adaptation to speaker variations is an essential component of speech recognition systems. One common...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
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...
This paper investigates the use of parameterised sigmoid and rectified linear unit (ReLU) hidden act...
Deep neural networks (DNN) are currently very successful for acoustic modeling in ASR systems. One o...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
Automatic speech recognition (ASR) is a key core technology for the information age. ASR systems hav...
Speech enhancement directly using deep neural network (DNN) is of major interest due to the capabili...
The introduction of deep neural networks (DNNs) has advanced the performance of automatic speech rec...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
Recently, deep neural networks (DNNs) have outperformed traditional acoustic models on a variety of ...
International audienceIn this paper we investigate GMM-derived features recentlyintroduced for adapt...
Recent progress in acoustic modeling with deep neural network has significantly improved the perform...
Adaptation to speaker variations is an essential component of speech recognition systems. One common...
Adaptation to speaker variations is an essential component of speech recognition systems. One common...
We investigate the concept of speaker adaptive training (SAT) in the context of deep neural network ...
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...
This paper investigates the use of parameterised sigmoid and rectified linear unit (ReLU) hidden act...
Deep neural networks (DNN) are currently very successful for acoustic modeling in ASR systems. One o...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
Automatic speech recognition (ASR) is a key core technology for the information age. ASR systems hav...
Speech enhancement directly using deep neural network (DNN) is of major interest due to the capabili...
The introduction of deep neural networks (DNNs) has advanced the performance of automatic speech rec...
Speaker adaptive training (SAT) is a well studied technique for Gaussian mixture acoustic models (GM...
Recently, deep neural networks (DNNs) have outperformed traditional acoustic models on a variety of ...
International audienceIn this paper we investigate GMM-derived features recentlyintroduced for adapt...
Recent progress in acoustic modeling with deep neural network has significantly improved the perform...