A variety of approaches to language identification, based on (a) acoustic features, (b) broad-category segmentation, and (c) fine phonetic classification, are introduced. These approaches are evaluated in terms of their ability to distinguish between English and Japanese utterances spoken over a telephone channel. It is found that the best performance (86.3 % accurate classification of utterances with a mean length of 13.4 sec) is obtained when fine phonetic features are employed. In addition, the results show the importance of discriminatory training rather than likelihood estimation. 1. INTRODUCTION As developments in telecommunications and long-distance travel cause national borders to become increasingly transparent, the ability to ide...
Language identification is an important issue in many speech applica-tions. We address this problem ...
This paper presents a method for phone-dependent weighting within phonotactic models in automatic la...
This paper presents two unsupervised approaches to Automatic Language Identification (ALI) based on ...
Automatic language identification, recognizing a speaker\u27s language from a speech signal, is gain...
The problem of automatically identifying a language from a spoken sample has, until recently, had ve...
We have developed a four-language automatic language identification sys-tem for high-quality speech....
The project work involves implementation and compar-ison of three approaches for automatic language ...
In this paper we present a general approach to identifying non-linguistic speech features from the r...
In this paper we explore the use of lexical information for language identification (LID). Our refer...
Many of the language identification (LID) systems are based on language models using machine learnin...
© Springer International Publishing AG 2017. The paper studies the problem of language identificatio...
Automatic language identification is one of the important topics in multilingual speech technology. ...
Prior speech and linguistics research has focused on the use of phonemes recognition in speech, and ...
ABSTRACT- — This paper presents a brief survey of feature extraction techniques used in language ide...
Abstract: We conducted human language identification experiments using signals with reduced segmenta...
Language identification is an important issue in many speech applica-tions. We address this problem ...
This paper presents a method for phone-dependent weighting within phonotactic models in automatic la...
This paper presents two unsupervised approaches to Automatic Language Identification (ALI) based on ...
Automatic language identification, recognizing a speaker\u27s language from a speech signal, is gain...
The problem of automatically identifying a language from a spoken sample has, until recently, had ve...
We have developed a four-language automatic language identification sys-tem for high-quality speech....
The project work involves implementation and compar-ison of three approaches for automatic language ...
In this paper we present a general approach to identifying non-linguistic speech features from the r...
In this paper we explore the use of lexical information for language identification (LID). Our refer...
Many of the language identification (LID) systems are based on language models using machine learnin...
© Springer International Publishing AG 2017. The paper studies the problem of language identificatio...
Automatic language identification is one of the important topics in multilingual speech technology. ...
Prior speech and linguistics research has focused on the use of phonemes recognition in speech, and ...
ABSTRACT- — This paper presents a brief survey of feature extraction techniques used in language ide...
Abstract: We conducted human language identification experiments using signals with reduced segmenta...
Language identification is an important issue in many speech applica-tions. We address this problem ...
This paper presents a method for phone-dependent weighting within phonotactic models in automatic la...
This paper presents two unsupervised approaches to Automatic Language Identification (ALI) based on ...