[[abstract]]A speech recognition method using an integration of multilayer neural network and hidden Markov model (HMM) techniques which can treat the time sequence signal with temporal variations is described. As an efficient implementation of the method, a pretwist procedure, which can compensate the recognition error caused by the alignment, is proposed. The HMM-based warping method leads to networks which can respond in a more flexible way to variations in the temporal structure of speech. As an experimental result, 91.2% recognition accuracy was obtained on the vocabulary of the Chinese final vowel. This performance is much better than that of the neural network or HMM alone.[[fileno]]2030235030008[[department]]資訊工程學
Recent theoretical developments in neuroscience suggest that sublexical speech processing occurs via...
Speech recognition is an important component of biological identification which is an integrated tec...
Neural networks have been one of the most successful recognition models for automatic speech recogni...
A technique is proposed for the adaptation of automatic speech recognition systems using Hybrid mode...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
Although Automatic Speech Recognition (ASR) systems based on hidden Markov models (HMMs) are popular...
Artificial neural networks (ANNs) have been used to classify phonetic features in speech. The featur...
Speech is the most efficient way to train a machine or communicate with a machine. This work focuses...
The recognition rate of syllables in continuous speech is hampered due t o the large size of t he sy...
The hidden Markov model (HMM) is commonly employed in automatic speech recognition (ASR). The HMM ha...
neme recognition which is characterized by two important properties: 1.) Using a 3 layer arrangement...
We are addressing the novel problem of jointly evaluating multiple speech patterns for automatic s...
In spite of the advances accomplished throughout the last decades by a number of research teams, Aut...
This paper introduces approaches based on vocal tract length normalisation (VTLN) techniques for hyb...
Automatic Speech Recognition (ASR) is a challenging classification task over sequences of acoustic f...
Recent theoretical developments in neuroscience suggest that sublexical speech processing occurs via...
Speech recognition is an important component of biological identification which is an integrated tec...
Neural networks have been one of the most successful recognition models for automatic speech recogni...
A technique is proposed for the adaptation of automatic speech recognition systems using Hybrid mode...
State-of-the-art automatic speech recognition (ASR) techniques are typically based on hidden Markov ...
Although Automatic Speech Recognition (ASR) systems based on hidden Markov models (HMMs) are popular...
Artificial neural networks (ANNs) have been used to classify phonetic features in speech. The featur...
Speech is the most efficient way to train a machine or communicate with a machine. This work focuses...
The recognition rate of syllables in continuous speech is hampered due t o the large size of t he sy...
The hidden Markov model (HMM) is commonly employed in automatic speech recognition (ASR). The HMM ha...
neme recognition which is characterized by two important properties: 1.) Using a 3 layer arrangement...
We are addressing the novel problem of jointly evaluating multiple speech patterns for automatic s...
In spite of the advances accomplished throughout the last decades by a number of research teams, Aut...
This paper introduces approaches based on vocal tract length normalisation (VTLN) techniques for hyb...
Automatic Speech Recognition (ASR) is a challenging classification task over sequences of acoustic f...
Recent theoretical developments in neuroscience suggest that sublexical speech processing occurs via...
Speech recognition is an important component of biological identification which is an integrated tec...
Neural networks have been one of the most successful recognition models for automatic speech recogni...