Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission distributions to model the acoustics. There have been several attempts however to challenge this approach, e.g. by introducing a neural network (NN) as an alternative acoustic model. Although the performance of these so-called hybrid systems is actually quite good, their training is often problematic and time consuming. By using a reservoir – this is a recurrent NN with only the output weights being trainable – we can overcome this disadvantage and yet obtain good accuracy. In this paper, we propose the first reservoir-based connected digit recognition system, and we demonstrate good performance on the Aurora-2 testbed. Since RC is a new tec...
Recurrent neural networks are very powerful engines for processing information that is coded in time...
Modern day technology demands sophisticated technology to give input commands to computational devic...
Reservoir Computing (RC) is a recent research axea, in which a untrained recurrent network of nodes ...
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 (...
Accurate acoustic modeling is an essential requirement of a state-of-the-art continuous speech recog...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
This paper investigates the use of feed-forward multi-layer perceptrons trained by back-propagation ...
This paper describes a series of experiments that compare different approaches to training a speaker...
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...
This paper describes a series of experiments that compare different approaches to training a speaker...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
This paper investigates the use of feed-forward multi-layer perceptrons trained by back-propagation ...
Recurrent neural networks are very powerful engines for processing information that is coded in time...
Modern day technology demands sophisticated technology to give input commands to computational devic...
Reservoir Computing (RC) is a recent research axea, in which a untrained recurrent network of nodes ...
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 (...
Accurate acoustic modeling is an essential requirement of a state-of-the-art continuous speech recog...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
This paper investigates the use of feed-forward multi-layer perceptrons trained by back-propagation ...
This paper describes a series of experiments that compare different approaches to training a speaker...
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...
This paper describes a series of experiments that compare different approaches to training a speaker...
International audienceReservoir Computing is an attractive paradigm of recurrent neural network arch...
This paper investigates the use of feed-forward multi-layer perceptrons trained by back-propagation ...
Recurrent neural networks are very powerful engines for processing information that is coded in time...
Modern day technology demands sophisticated technology to give input commands to computational devic...
Reservoir Computing (RC) is a recent research axea, in which a untrained recurrent network of nodes ...