Notwithstanding the many years of research, more work is needed to create automatic speech recognition (ASR) systems with a close-to-human robustness against confounding factors such as ambient noise, channel distortion, etc. Whilst most work thus far focused on the improvement of ASR systems embedding Gaussian Mixture Models (GMM)s to compute the acoustic likelihoods in the states of a Hidden Markov Model (HMM), the present work focuses on the noise robustness of systems employing Reservoir Computing (RC) as an alternative acoustic modeling technique. Previous work already demonstrated good noise robustness for continuous digit recognition (CDR). The present paper investigates whether further progress can be achieved by driving reservoirs ...
Modern day technology demands sophisticated technology to give input commands to computational devic...
International audienceThis paper investigates recently proposed Stranded Gaussian Mixture acoustic M...
Reservoir Computing Networks (RCNs) are a special type of single layer recurrent neural networks, in...
In this paper a formerly proposed continuous digit recognition system based on Reservoir Computing (...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
Recently, automatic speech recognition has advanced significantly by the introduction of deep neural...
Automatic speech recognition has gradually improved over the years, but the reliable recognition of ...
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...
Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission...
Multiconditional Modeling is widely used to create noise-robust speaker recognition systems. However...
In this paper we focus on the challenging task of noise robustness for large vocabulary Continuous S...
It is well known that additive noise can cause a significant decrease in performance for an automati...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
Real world applications such as hands-free speech recognition of isolated digits may have to deal wi...
Modern day technology demands sophisticated technology to give input commands to computational devic...
International audienceThis paper investigates recently proposed Stranded Gaussian Mixture acoustic M...
Reservoir Computing Networks (RCNs) are a special type of single layer recurrent neural networks, in...
In this paper a formerly proposed continuous digit recognition system based on Reservoir Computing (...
In earlier work we have shown that good phoneme recognition is possible with a so-called reservoir, ...
Recently, automatic speech recognition has advanced significantly by the introduction of deep neural...
Automatic speech recognition has gradually improved over the years, but the reliable recognition of ...
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...
Most automatic speech recognition systems employ Hidden Markov Models with Gaussian mixture emission...
Multiconditional Modeling is widely used to create noise-robust speaker recognition systems. However...
In this paper we focus on the challenging task of noise robustness for large vocabulary Continuous S...
It is well known that additive noise can cause a significant decrease in performance for an automati...
Much research has been focused on the problem of achieving automatic speech recognition (ASR) which ...
Real world applications such as hands-free speech recognition of isolated digits may have to deal wi...
Modern day technology demands sophisticated technology to give input commands to computational devic...
International audienceThis paper investigates recently proposed Stranded Gaussian Mixture acoustic M...
Reservoir Computing Networks (RCNs) are a special type of single layer recurrent neural networks, in...