Graphical models provide a promising paradigm to study both existing and novel techniques for automatic speech recognition. This paper first provides a brief overview of graphical models and their uses as statistical models. It is then shown that the statistical assumptions behind many pattern recognition techniques commonly used as part of a speech recognition system can be described by a graph – this includes Gaussian distributions, mixture models, decision trees, factor analysis, principle component analysis, linear discriminant analysis, and hidden Markov models. Moreover, this paper shows that many advanced models for speech recognition and language processing can also be simply described by a graph, including many at the acoustic-, pr...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
Recent work in phonetic speaker recognition has shown that modeling phone sequences using n-grams is...
Robust speech recognition in acoustic environments that contain multiple speech sources and/or compl...
In recent years there has been growing interest in discriminative parameter training techniques, res...
Robust speech recognition in acoustic environments that contain multiple speech sources and/or compl...
Several feature extraction techniques, algorithms and toolkits are researched to investigate how spe...
Automatic speech recognition is often formulated as a statistical pattern classification problem. Ba...
The general subject of this work is to present mathematical methods encountered in auto-matic speech...
Some of the major research issues in the field of speech recognition revolve around methods of incor...
Conventional speech recognition systems are based on Gaussian hidden Markov models (HMMs).Discrimina...
Although initially introduced and studied in the late 1960s and early 1970s, statistical methods of ...
Despite the fact that speech recognition involves a fair amount of natural language processing, ther...
Generative models, normally in the form of hidden Markov models, have been the dominant form of acou...
Abstract. Speech recognition is the important problem in pattern recognition research field. In this...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
Recent work in phonetic speaker recognition has shown that modeling phone sequences using n-grams is...
Robust speech recognition in acoustic environments that contain multiple speech sources and/or compl...
In recent years there has been growing interest in discriminative parameter training techniques, res...
Robust speech recognition in acoustic environments that contain multiple speech sources and/or compl...
Several feature extraction techniques, algorithms and toolkits are researched to investigate how spe...
Automatic speech recognition is often formulated as a statistical pattern classification problem. Ba...
The general subject of this work is to present mathematical methods encountered in auto-matic speech...
Some of the major research issues in the field of speech recognition revolve around methods of incor...
Conventional speech recognition systems are based on Gaussian hidden Markov models (HMMs).Discrimina...
Although initially introduced and studied in the late 1960s and early 1970s, statistical methods of ...
Despite the fact that speech recognition involves a fair amount of natural language processing, ther...
Generative models, normally in the form of hidden Markov models, have been the dominant form of acou...
Abstract. Speech recognition is the important problem in pattern recognition research field. In this...
The demand of intelligent machines that may recognize the spoken speech and respond in a natural vo...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
Recent work in phonetic speaker recognition has shown that modeling phone sequences using n-grams is...