In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, a special type of recurrent neural network. In this paper, different architectures based on Reservoir Computing (RC) for large vocabulary continuous speech recognition are investigated. Besides experiments with HMM hybrids, it is shown that a RC-HMM tandem can achieve the same recognition accuracy as a classical HMM, which is a promising result for such a fairly new paradigm. It is also demonstrated that a state-level combination of the scores of the tandem and the baseline HMM leads to a significant improvement over the baseline. A word error rate reduction of the order of 20\% relative is possible
In the tandem approach to modeling the acoustic signal, a neural-net preprocessor is first discrimin...
HLT1994: Workshop on Human Language Technology , March 8-11, 1994, Plainsboro, New Jerey, USA.Thi...
Deep neural networks have advanced the state-of-the-art in automatic speech recognition, when combin...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
Accurate acoustic modeling is an essential requirement of a state-of-the-art continuous speech recog...
Automatic speech recognition has gradually improved over the years, but the reliable recognition of ...
Notwithstanding the many years of research, more work is needed to create automatic speech recogniti...
Modern day technology demands sophisticated technology to give input commands to computational devic...
This paper presents a new hybrid system for speaker independent continuous speech recognition in a l...
Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission...
In this paper a formerly proposed continuous digit recognition system based on Reservoir Computing (...
We have trained and tested a number of large neural networks for the purpose of emission probability...
Generative models for sequential data based on directed graphs of Restricted Boltzmann Machines (RBM...
A hybrid system for continuous speech recognition, consisting of a neural network with Radial Basis ...
In the tandem approach to modeling the acoustic signal, a neural-net preprocessor is first discrimin...
HLT1994: Workshop on Human Language Technology , March 8-11, 1994, Plainsboro, New Jerey, USA.Thi...
Deep neural networks have advanced the state-of-the-art in automatic speech recognition, when combin...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
Accurate acoustic modeling is an essential requirement of a state-of-the-art continuous speech recog...
Automatic speech recognition has gradually improved over the years, but the reliable recognition of ...
Notwithstanding the many years of research, more work is needed to create automatic speech recogniti...
Modern day technology demands sophisticated technology to give input commands to computational devic...
This paper presents a new hybrid system for speaker independent continuous speech recognition in a l...
Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission...
In this paper a formerly proposed continuous digit recognition system based on Reservoir Computing (...
We have trained and tested a number of large neural networks for the purpose of emission probability...
Generative models for sequential data based on directed graphs of Restricted Boltzmann Machines (RBM...
A hybrid system for continuous speech recognition, consisting of a neural network with Radial Basis ...
In the tandem approach to modeling the acoustic signal, a neural-net preprocessor is first discrimin...
HLT1994: Workshop on Human Language Technology , March 8-11, 1994, Plainsboro, New Jerey, USA.Thi...
Deep neural networks have advanced the state-of-the-art in automatic speech recognition, when combin...