Automatic Speech Recognition (ASR) can be very useful in language learning tools in order to correct mistakes in the pronunciation of foreign words by non-native speakers. Most of the systems integrating ASR proposed on the market are just rejecting or accepting whole words or whole sentences. In this paper, we propose a method to identify the pronunciation errors at the phoneme level. Indeed, mistakes are often predictable and concern a particular subset of phonemes not present in the mother language of the speaker. We describe two different approaches based on the Hybrid HMM/ANN technology. The methodology for the training of the recognizer is discussed, and we describe a new approach where a mixed database is used to train a speech recog...
In this paper, we present an acoustic-phonetic approach to automatic pronunciation error detection. ...
This paper presents a new approach that uses linguistic knowledge and pronunciation space for automa...
This article focuses on modeling pronunciation variation in two different ways: data-derived and kno...
The authors address the question whether phonological features can be used effectively in an automat...
The areas of mispronunciation detection (or accent detection more specifically) within the speec...
Pronunciation is one of the fundamentals of language learning, and it is considered a primary factor...
The pronunciation dictionary, or lexicon, is an essential component in an automatic speech recogniti...
Pronunciations for words are a critical component in an automated speech recognition system (ASR) as...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
An automatic system for detection of pronunciation errors by adult learners of English is embedded i...
Today it is crucial to have up-to-date information for companies to be more competitive in this busi...
This paper focuses on modeling pronunciation variation in two di�erent ways: data-derived and knowle...
This paper presents a phonological feature based computer aided pronunciation training system for th...
Providing feedback on pronunciation errors in computer assisted language learning systems requires t...
This thesis reports the investigations into the task of phone-level pronunciation error detection, t...
In this paper, we present an acoustic-phonetic approach to automatic pronunciation error detection. ...
This paper presents a new approach that uses linguistic knowledge and pronunciation space for automa...
This article focuses on modeling pronunciation variation in two different ways: data-derived and kno...
The authors address the question whether phonological features can be used effectively in an automat...
The areas of mispronunciation detection (or accent detection more specifically) within the speec...
Pronunciation is one of the fundamentals of language learning, and it is considered a primary factor...
The pronunciation dictionary, or lexicon, is an essential component in an automatic speech recogniti...
Pronunciations for words are a critical component in an automated speech recognition system (ASR) as...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
An automatic system for detection of pronunciation errors by adult learners of English is embedded i...
Today it is crucial to have up-to-date information for companies to be more competitive in this busi...
This paper focuses on modeling pronunciation variation in two di�erent ways: data-derived and knowle...
This paper presents a phonological feature based computer aided pronunciation training system for th...
Providing feedback on pronunciation errors in computer assisted language learning systems requires t...
This thesis reports the investigations into the task of phone-level pronunciation error detection, t...
In this paper, we present an acoustic-phonetic approach to automatic pronunciation error detection. ...
This paper presents a new approach that uses linguistic knowledge and pronunciation space for automa...
This article focuses on modeling pronunciation variation in two different ways: data-derived and kno...