This paper presents a novel system for automatic assessment of pronunciation quality of English learner speech, based on deep neural network (DNN) features and phoneme specific discriminative classifiers. DNNs trained on a large corpus of native and non-native learner speech are used to extract phoneme posterior probabilities. A part of the corpus includes per phone teacher annotations, which allows training of two Gaussian Mixture Models (GMM), representing correct pronunciations and typical error patterns. The likelihood ratio is then obtained for each observed phone. Several models were evaluated on a large corpus of English-learning students, with a variety of skill levels, and aged 13 upwards. The cross-correlation of the best system a...
This paper presents a phonological feature based computer aided pronunciation training system for th...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Pronunciations for words are a critical component in an automated speech recognition system (ASR) as...
Growing global demand for learning a second language (L2), particularly English, has led to consider...
The main purpose of this research is to test the use of deep learning for automatically classifying ...
This paper describes technology developed to automatically grade Italian students (ages 9-16) on the...
The authors address the question whether phonological features can be used effectively in an automat...
With increasing global demand for learning English as a second language, there has been considerable...
The oral English teaching faces several common problems: the teaching method is very inefficient, an...
An automatic system for detection of pronunciation errors by adult learners of English is embedded i...
Automatically evaluating pronunciation quality of non-native speech has seen tremendous success in b...
This paper presents results of a joint project between an engineering team of a university and an ed...
We address the task of automatically grading the language proficiency of spontaneousspeech based on ...
Learning to speak a foreign language is not an easy task for many people. This paper describes appro...
When beginners learn to speak a non-native language, it is difficult for them to judge for themselve...
This paper presents a phonological feature based computer aided pronunciation training system for th...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Pronunciations for words are a critical component in an automated speech recognition system (ASR) as...
Growing global demand for learning a second language (L2), particularly English, has led to consider...
The main purpose of this research is to test the use of deep learning for automatically classifying ...
This paper describes technology developed to automatically grade Italian students (ages 9-16) on the...
The authors address the question whether phonological features can be used effectively in an automat...
With increasing global demand for learning English as a second language, there has been considerable...
The oral English teaching faces several common problems: the teaching method is very inefficient, an...
An automatic system for detection of pronunciation errors by adult learners of English is embedded i...
Automatically evaluating pronunciation quality of non-native speech has seen tremendous success in b...
This paper presents results of a joint project between an engineering team of a university and an ed...
We address the task of automatically grading the language proficiency of spontaneousspeech based on ...
Learning to speak a foreign language is not an easy task for many people. This paper describes appro...
When beginners learn to speak a non-native language, it is difficult for them to judge for themselve...
This paper presents a phonological feature based computer aided pronunciation training system for th...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Pronunciations for words are a critical component in an automated speech recognition system (ASR) as...