It is well-known in machine learning that multitask learning (MTL) can help improve the generalization performance of singly learning tasks if the tasks being trained in parallel are related, especially when the amount of training data is relatively small. In this paper, we investigate the estimation of triphone acoustic models in parallel with the estimation of trigrapheme acoustic models under the MTL framework using deep neural network (DNN). As triphone modeling and trigrapheme modeling are highly related learning tasks, a better shared internal representation (the hidden layers) can be learned to improve their generalization performance. Experimental evaluation on three low-resource South African languages shows that triphone DNNs trai...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In this paper we revisit the recently proposed triphone mapping as an alternative to decision tree s...
In the tandem approach to modeling the acoustic signal, a neural-net preprocessor is first discrimin...
This thesis investigates methods for Acoustic Modeling in Automatic Speech Recog- nition, assuming l...
The development of a speech recognition system requires at least three resources: a large labeled sp...
Deep neural networks (DNNs) use a cascade of hidden representa-tions to enable the learning of compl...
Deep neural networks (DNNs) use a cascade of hidden representa-tions to enable the learning of compl...
Audio classification is regarded as a great challenge in pattern recognition. Although audio classif...
In this work, we propose several deep neural network architectures that are able to leverage data fr...
<p>In this work, we propose several deep neural network architectures that are able to leverage data...
Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been applied su...
This paper presents a study on multilingual deep neural net-work (DNN) based acoustic modeling and i...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...
© 2014 IEEE. Deep neural networks (DNNs) have shown a great promise in exploiting out-of-language da...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In this paper we revisit the recently proposed triphone mapping as an alternative to decision tree s...
In the tandem approach to modeling the acoustic signal, a neural-net preprocessor is first discrimin...
This thesis investigates methods for Acoustic Modeling in Automatic Speech Recog- nition, assuming l...
The development of a speech recognition system requires at least three resources: a large labeled sp...
Deep neural networks (DNNs) use a cascade of hidden representa-tions to enable the learning of compl...
Deep neural networks (DNNs) use a cascade of hidden representa-tions to enable the learning of compl...
Audio classification is regarded as a great challenge in pattern recognition. Although audio classif...
In this work, we propose several deep neural network architectures that are able to leverage data fr...
<p>In this work, we propose several deep neural network architectures that are able to leverage data...
Multilingual deep neural networks (DNNs) can act as deep feature extractors and have been applied su...
This paper presents a study on multilingual deep neural net-work (DNN) based acoustic modeling and i...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...
We proposed an approach to build a robust automatic speech recognizer using deep convolutional neura...
© 2014 IEEE. Deep neural networks (DNNs) have shown a great promise in exploiting out-of-language da...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
In this paper we revisit the recently proposed triphone mapping as an alternative to decision tree s...
In the tandem approach to modeling the acoustic signal, a neural-net preprocessor is first discrimin...