Most state-of-the-art spoken language identification models are closed-set; in other words, they can only output a language label from the set of classes they were trained on. Open-set spoken language identification systems, however, gain the ability to detect when an input exhibits none of the original languages. In this paper, we implement a novel approach to open-set spoken language identification that uses MFCC and pitch features, a TDNN model to extract meaningful feature embeddings, confidence thresholding on softmax outputs, and LDA and pLDA for learning to classify new unknown languages. We present a spoken language identification system that achieves 91.76% accuracy on trained languages and has the capability to adapt to unknown la...
AbstractIn this work, we present a comprehensive study on the use of deep neural networks (DNNs) for...
A key problem in spoken language identification (LID) is to design effective representations which a...
In this paper we present a new application for confidence measures in spoken language processing. In...
While most modern speech Language Identification methods are closed-set, we want to see if they can ...
The field of speaker and language recognition is constantly being researched and developed, but much...
Language identification (LID) is a fundamental step in many natural language processing pipelines. H...
| openaire: EC/H2020/780069/EU//MeMADIn this paper, we propose a software toolkit for easier end-to-...
The acoustic and linguistic features are important cues for the spoken language identification (LID)...
In this paper, we introduce a massively multilingual speech corpora with fine-grained phonemic trans...
Language Identification (LID) is the task of automatically identifying the language of speech signal...
Automatic spoken language identification (UD) refers to the task of identifying the language spoken ...
A key problem in spoken language identification (LID) is to design effective representations which a...
In this work, we present a comprehensive study on the use of deep neural networks (DNNs) for automat...
Many languages identification (LID) systems rely on language models that use machine learning (ML) a...
Many of the language identification (LID) systems are based on language models using machine learnin...
AbstractIn this work, we present a comprehensive study on the use of deep neural networks (DNNs) for...
A key problem in spoken language identification (LID) is to design effective representations which a...
In this paper we present a new application for confidence measures in spoken language processing. In...
While most modern speech Language Identification methods are closed-set, we want to see if they can ...
The field of speaker and language recognition is constantly being researched and developed, but much...
Language identification (LID) is a fundamental step in many natural language processing pipelines. H...
| openaire: EC/H2020/780069/EU//MeMADIn this paper, we propose a software toolkit for easier end-to-...
The acoustic and linguistic features are important cues for the spoken language identification (LID)...
In this paper, we introduce a massively multilingual speech corpora with fine-grained phonemic trans...
Language Identification (LID) is the task of automatically identifying the language of speech signal...
Automatic spoken language identification (UD) refers to the task of identifying the language spoken ...
A key problem in spoken language identification (LID) is to design effective representations which a...
In this work, we present a comprehensive study on the use of deep neural networks (DNNs) for automat...
Many languages identification (LID) systems rely on language models that use machine learning (ML) a...
Many of the language identification (LID) systems are based on language models using machine learnin...
AbstractIn this work, we present a comprehensive study on the use of deep neural networks (DNNs) for...
A key problem in spoken language identification (LID) is to design effective representations which a...
In this paper we present a new application for confidence measures in spoken language processing. In...