Under-resourced speech recognizers may benefit from data in languages other than the target language. In this paper, we boost the performance of an Afrikaans speech recognizer by using already available data from other languages. To successfully exploit available multilingual resources, we use posterior features, estimated by multilayer perceptrons that are trained on similar languages. For two different acoustic modeling techniques, Tandem and Kullback-Leibler divergence based HMMs, the proposed multilingual system yields more than 10% relative improvement compared to the corresponding monolingual systems only trained on Afrikaans
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
Automatic speech recognition systems have so far been developed only for very few languages out of t...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...
Under-resourced speech recognizers may benefit from data in languages other than the target language...
Under-resourced speech recognizers may benefit from data in languages other than the target language...
Recent studies have shown that speech recognizers may benefit from data in languages other than the ...
For purposes of automated speech recognition in under-resourced environments, techniques used to sha...
Over the past decades, speech recognition has dramatically improved in a large variety of applicatio...
Posterior based acoustic modeling techniques such as Kullback– Leibler divergence based HMM (KL-HMM)...
The development of automatic speech recognition systems requires significant quantities of annotated...
The development of a speech recognition system requires at least three resources: a large labeled sp...
Standard automatic speech recognition (ASR) systems use phonemes as subword units. Thus, one of the ...
This thesis explores methods to rapidly bootstrap automatic speech recognition systems for languages...
Sahraeian R., Van Compernolle D., de Wet F., ''Using generalized maxout networks and phoneme mapping...
Automatic speech recognition requires many hours of transcribed speech recordings in order for an a...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
Automatic speech recognition systems have so far been developed only for very few languages out of t...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...
Under-resourced speech recognizers may benefit from data in languages other than the target language...
Under-resourced speech recognizers may benefit from data in languages other than the target language...
Recent studies have shown that speech recognizers may benefit from data in languages other than the ...
For purposes of automated speech recognition in under-resourced environments, techniques used to sha...
Over the past decades, speech recognition has dramatically improved in a large variety of applicatio...
Posterior based acoustic modeling techniques such as Kullback– Leibler divergence based HMM (KL-HMM)...
The development of automatic speech recognition systems requires significant quantities of annotated...
The development of a speech recognition system requires at least three resources: a large labeled sp...
Standard automatic speech recognition (ASR) systems use phonemes as subword units. Thus, one of the ...
This thesis explores methods to rapidly bootstrap automatic speech recognition systems for languages...
Sahraeian R., Van Compernolle D., de Wet F., ''Using generalized maxout networks and phoneme mapping...
Automatic speech recognition requires many hours of transcribed speech recordings in order for an a...
Copyright © 2014 ISCA. Developing high-performance speech processing systems for low-resource langua...
Automatic speech recognition systems have so far been developed only for very few languages out of t...
This paper presents a novel acoustic modeling technique of large vocabulary automatic speech recogni...