In an effort to advance the state of the art in continuous peech recognition employing hidden Markov models (HMM), Segmental Neural Nets (SNN) were introduced recently to ameliorate the well-known limitations of HMMs, namely, the conditional-independence limitation and the relative difficulty with which HMMs can handle segmental features. We describe a hybrid SNN/I-IMM system that combines the speed and performance of our HMM system with the segmental modeling capabilities of SNNs. The integration of the two acoustic modeling techniques i achieved successfully via the N-best rescoring paradigm. The N-best lists are used not only for recognition, but also during training. This discriminative training using N-best is demonstrated to improve p...
In this paper we report a series of tests carried out on our hybrid HMM/ANN systems which aims at co...
In this paper, we present a novel hybrid architecture for continuous speech recognition systems. It ...
This paper presents a new hybrid system for speaker independent continuous speech recognition in a l...
We present he concept of a "Segmental Neural Net " (SNN) for phonetic modeling in continuo...
Previously, we had developed the concept of a Segmental Neural Net (SNN) for phonetic modeling in co...
This paper describes a hybrid system for continuous speech recognition consisting of a neural networ...
Hybrid systems which integrate the deep neural network (DNN) and hidden Markov model (HMM) have rece...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
In recent years, researchers have established the viability of so called hybrid NN/HMM large vocabul...
Acoustic modeling in state-of-the-art speech recognition systems usually relies on hidden Markov mod...
In spite of the advances accomplished throughout the last decades by a number of research teams, Aut...
In spite of the advances accomplished throughout the last decades, automatic speech recognition (ASR...
This report focuses on a hybrid approach, including stochastic and connectionist methods, for contin...
In this work we do a comparative evaluation between Artificial Neural Networks (RNA's) and Continuou...
In this paper we report a series of tests carried out on our hybrid HMM/ANN systems which aims at co...
In this paper, we present a novel hybrid architecture for continuous speech recognition systems. It ...
This paper presents a new hybrid system for speaker independent continuous speech recognition in a l...
We present he concept of a "Segmental Neural Net " (SNN) for phonetic modeling in continuo...
Previously, we had developed the concept of a Segmental Neural Net (SNN) for phonetic modeling in co...
This paper describes a hybrid system for continuous speech recognition consisting of a neural networ...
Hybrid systems which integrate the deep neural network (DNN) and hidden Markov model (HMM) have rece...
The Segmental Neural Network (SNN) architecture was introduced at BBN by Zavaliagkos et al. for resc...
Neural network learning theory draws a relationship between “learning with noise” and applying a reg...
In recent years, researchers have established the viability of so called hybrid NN/HMM large vocabul...
Acoustic modeling in state-of-the-art speech recognition systems usually relies on hidden Markov mod...
In spite of the advances accomplished throughout the last decades by a number of research teams, Aut...
In spite of the advances accomplished throughout the last decades, automatic speech recognition (ASR...
This report focuses on a hybrid approach, including stochastic and connectionist methods, for contin...
In this work we do a comparative evaluation between Artificial Neural Networks (RNA's) and Continuou...
In this paper we report a series of tests carried out on our hybrid HMM/ANN systems which aims at co...
In this paper, we present a novel hybrid architecture for continuous speech recognition systems. It ...
This paper presents a new hybrid system for speaker independent continuous speech recognition in a l...