Machine learning has revolutionised speech technologies for major world languages, but these technologies have generally not been available for the roughly 4,000 languages with populations of fewer than 10,000 speakers. This paper describes the development of Elpis, a pipeline which language documentation workers with minimal computational experience can use to build their own speech recognition models, resulting in models being built for 16 languages from the Asia-Pacific region. Elpis puts machine learning speech technologies within reach of people working with languages with scarce data, in a scalable way. This is impactful since it enables language communities to cross the digital divide, and speeds up language documentation. Complete a...
In this workshop we will use Elpis, an open source speech to text system, to train language models a...
Advances in statistical machine learning encourage language-independent approaches to linguistic tec...
Advances in statistical machine learning encourage language-independent approaches to linguistic tec...
Machine learning has revolutionized speech technologies for major world languages, but these technol...
Machine learning has revolutionized speech technologies for major world languages, but these technol...
© 2015 IEEE.More than 7100 languages are spoken in the world and the significant part of these langu...
International audienceMost speech and language technologies are trained with massive amounts of spee...
This paper reports on progress integrating the speech recognition toolkit ESPnet into Elpis,a web fr...
International audienceIn recent times, there has been a growing number of research studies focused o...
About half of the living languages and dialects, including the Greek ones, are endangered, and langu...
In the paper, we present a software pipeline for speech recognition to automate the creation of trai...
In this paper, we present an end-to-end solution to the development of an automatic speech recogniti...
International audienceEnormous progress in speech technologies has been achieved over the last twode...
Speech technology applications for major languages are becoming widely available, but for many other...
This paper reports on a project within the DoBeS-program in which a digital multimedia encyclopaedic...
In this workshop we will use Elpis, an open source speech to text system, to train language models a...
Advances in statistical machine learning encourage language-independent approaches to linguistic tec...
Advances in statistical machine learning encourage language-independent approaches to linguistic tec...
Machine learning has revolutionized speech technologies for major world languages, but these technol...
Machine learning has revolutionized speech technologies for major world languages, but these technol...
© 2015 IEEE.More than 7100 languages are spoken in the world and the significant part of these langu...
International audienceMost speech and language technologies are trained with massive amounts of spee...
This paper reports on progress integrating the speech recognition toolkit ESPnet into Elpis,a web fr...
International audienceIn recent times, there has been a growing number of research studies focused o...
About half of the living languages and dialects, including the Greek ones, are endangered, and langu...
In the paper, we present a software pipeline for speech recognition to automate the creation of trai...
In this paper, we present an end-to-end solution to the development of an automatic speech recogniti...
International audienceEnormous progress in speech technologies has been achieved over the last twode...
Speech technology applications for major languages are becoming widely available, but for many other...
This paper reports on a project within the DoBeS-program in which a digital multimedia encyclopaedic...
In this workshop we will use Elpis, an open source speech to text system, to train language models a...
Advances in statistical machine learning encourage language-independent approaches to linguistic tec...
Advances in statistical machine learning encourage language-independent approaches to linguistic tec...