Approaches in Automatic Speech Recognition based on classic acoustic models seem not to exploit all the information lying in a speech signal; furthermore decoding procedures have real time constraints preventing the system to achieve optimal alignment between acoustic models and signal. In this paper, we present an approach to speech recognition in which Factorial Hidden Markov Models (FHMM) are used as syllabic acoustic models. An alignment algorithm is used for unit decoding. As applicative domain we choose numbers (range 0-999,999) uttered in Italian. Syllabic accuracy in our model is 84.81%, correctness on numbers is 77.74%. Aim of the experiment is to show that the...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models, in which Ga...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
In most speech recognition systems, acoustic features are extracted from the whole frequency spectru...
Approaches in Automatic Speech Recognition based on classic acoustic models seem not to...
During the last decade the field of speech recognition has used the theory of hidden Markov models (...
Paiva Proenca K., Demuynck K., Van Compernolle D., ''Designing syllable models for an HMM based spee...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models (HMM), in wh...
This paper presents the theoretical basis and preliminary experimental results of a new HMM model, r...
Speech segmentation refers to the problem of determining the phoneme boundaries from an acoustic rec...
The hidden Markov model (HMM) is commonly employed in automatic speech recognition (ASR). The HMM ha...
Statistical data-driven methods and knowledge-based methods are two recent trends in Automatic Speec...
The task of a speech recogniser is to transcribe human speech into text. To do so, modern recogniser...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
The most frequently used methods of automatic detection and classification of speech disordersare ba...
The standard hidden Markov model (HMM) has been proved to be the most successful model for speech re...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models, in which Ga...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
In most speech recognition systems, acoustic features are extracted from the whole frequency spectru...
Approaches in Automatic Speech Recognition based on classic acoustic models seem not to...
During the last decade the field of speech recognition has used the theory of hidden Markov models (...
Paiva Proenca K., Demuynck K., Van Compernolle D., ''Designing syllable models for an HMM based spee...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models (HMM), in wh...
This paper presents the theoretical basis and preliminary experimental results of a new HMM model, r...
Speech segmentation refers to the problem of determining the phoneme boundaries from an acoustic rec...
The hidden Markov model (HMM) is commonly employed in automatic speech recognition (ASR). The HMM ha...
Statistical data-driven methods and knowledge-based methods are two recent trends in Automatic Speec...
The task of a speech recogniser is to transcribe human speech into text. To do so, modern recogniser...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
The most frequently used methods of automatic detection and classification of speech disordersare ba...
The standard hidden Markov model (HMM) has been proved to be the most successful model for speech re...
The majority of automatic speech recognition (ASR) systems rely on hidden Markov models, in which Ga...
We propose that using a continuous trajectory model to describe an articulatory-based feature set wi...
In most speech recognition systems, acoustic features are extracted from the whole frequency spectru...