This paper reports on an experiment to determine the optimal parameters for a speech recogniser that is part of a computer aided instruction system for assisting learners of English as a Second Language. The recogniser uses Hidden Markov Model (HMM) technology. To find the best choice of parameters for the recogniser, an exhaustive experiment with 2370 combinations of parameters was performed on a data set of 1119 different English utterances produced by 6 female adults. A server-client computer network was used to carry out the experiment. The experimental results give a clear preference for certain sets of parameters. An analysis of the results also identified some of the causes of errors and the paper proposes two approaches to reduce th...
[[abstract]]© 2003 Institute of Electrical and Electronics Engineers - A model-based framework of cl...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
Speech recognition is important for successful development of speech recognizers in most real world ...
Natural language processing enables computer and machines to understand and speak human languages. S...
In this study, Hidden Markov Models (HMMs) were used to evaluate pronunciation. Native and non-nativ...
This paper aims to design and implement English digits speech recognition system using Matlab (GUI)....
The phoneme classification inaccuracy at the acoustic phonetic level is a major weakness in most spe...
Computer Assisted Pronunciation Training (CAPT) systems aim to provide immediate, individualized fee...
This paper presents an initial effort in the area of non-native children`s speech recognition by exp...
The field of Automatic Speech Recognition (ASR) is about 60 years old. There have been many interest...
This paper presents an initial effort in the area of non-native children’s speech recognition by exp...
Communication is the basic need of everyone for a person who want to survive in this world. Research...
With technological advancement in info-communication, speech recognition has become a major area of ...
The present dissertation describes the integration of some methodologies of robust speech recognitio...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
[[abstract]]© 2003 Institute of Electrical and Electronics Engineers - A model-based framework of cl...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
Speech recognition is important for successful development of speech recognizers in most real world ...
Natural language processing enables computer and machines to understand and speak human languages. S...
In this study, Hidden Markov Models (HMMs) were used to evaluate pronunciation. Native and non-nativ...
This paper aims to design and implement English digits speech recognition system using Matlab (GUI)....
The phoneme classification inaccuracy at the acoustic phonetic level is a major weakness in most spe...
Computer Assisted Pronunciation Training (CAPT) systems aim to provide immediate, individualized fee...
This paper presents an initial effort in the area of non-native children`s speech recognition by exp...
The field of Automatic Speech Recognition (ASR) is about 60 years old. There have been many interest...
This paper presents an initial effort in the area of non-native children’s speech recognition by exp...
Communication is the basic need of everyone for a person who want to survive in this world. Research...
With technological advancement in info-communication, speech recognition has become a major area of ...
The present dissertation describes the integration of some methodologies of robust speech recognitio...
In this paper, we demonstrate two different methods for improving the accuracy and correctness of th...
[[abstract]]© 2003 Institute of Electrical and Electronics Engineers - A model-based framework of cl...
Automatic Speech Recognition (ASR) systems utilize statistical acoustic and language models to find ...
Speech recognition is important for successful development of speech recognizers in most real world ...