The Automated Speech Recognition (ASR) community experiences a major turning point with the rise of the fully-neural (End-to-End, E2E) approaches. At the same time, the conventional hybrid model remains the standard choice for the practical usage of ASR. According to previous studies, the adoption of E2E ASR in real-world applications was hindered by two main limitations: their ability to generalize on unseen domains and their high operational cost. In this paper, we investigate both above-mentioned drawbacks by performing a comprehensive multi-domain benchmark of several contemporary E2E models and a hybrid baseline. Our experiments demonstrate that E2E models are viable alternatives for the hybrid approach, and even outperform the baselin...
Training an automatic speech recognition (ASR) post-processor based on sequence-to-sequence (S2S) re...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Language models are a critical component of an automatic speech recognition (ASR) system. Neural net...
As a result of advancement in deep learning and neural network technology, end-to-end models have be...
Personal rare word recognition in end-to-end Automatic Speech Recognition (E2E ASR) models is a chal...
abstract: Many tasks that humans do from day to day are taken for granted in term of appreciating th...
Over these last few years, the use of Artificial Neural Networks (ANNs), now often referred to as de...
This paper outlines structures of different automatic speech recognition systems, hybrid and end-to-...
Automatic Speech Recognition (ASR) functionality, the automatic translation of speech into text, is ...
Funding Information: We are grateful for the Academy of Finland project funding, numbers: 337073, 34...
International audienceAutomatic Speech Recognition systems use signal processing and machine learnin...
Funding Information: We are grateful for the Academy of Finland project funding, numbers: 337073, 34...
Examines future directions for automatic speech recognition, including modeling the whole speech sig...
Over the past decades, the dominant approach towards building automatic speech recognition (ASR) sys...
In this paper, we illustrate the close parallels between the research fields of human speech recogni...
Training an automatic speech recognition (ASR) post-processor based on sequence-to-sequence (S2S) re...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Language models are a critical component of an automatic speech recognition (ASR) system. Neural net...
As a result of advancement in deep learning and neural network technology, end-to-end models have be...
Personal rare word recognition in end-to-end Automatic Speech Recognition (E2E ASR) models is a chal...
abstract: Many tasks that humans do from day to day are taken for granted in term of appreciating th...
Over these last few years, the use of Artificial Neural Networks (ANNs), now often referred to as de...
This paper outlines structures of different automatic speech recognition systems, hybrid and end-to-...
Automatic Speech Recognition (ASR) functionality, the automatic translation of speech into text, is ...
Funding Information: We are grateful for the Academy of Finland project funding, numbers: 337073, 34...
International audienceAutomatic Speech Recognition systems use signal processing and machine learnin...
Funding Information: We are grateful for the Academy of Finland project funding, numbers: 337073, 34...
Examines future directions for automatic speech recognition, including modeling the whole speech sig...
Over the past decades, the dominant approach towards building automatic speech recognition (ASR) sys...
In this paper, we illustrate the close parallels between the research fields of human speech recogni...
Training an automatic speech recognition (ASR) post-processor based on sequence-to-sequence (S2S) re...
The performance of the speech recognition systems to translate voice to text is still an issue in la...
Language models are a critical component of an automatic speech recognition (ASR) system. Neural net...