Despite the significant progress made in the last years, state-of-the-art speech recognition technologies provide a satisfactory performance only in the close-talking condition. Robustness of distant speech recognition in adverse acoustic conditions, on the other hand, remains a crucial open issue for future applications of human-machine interaction. To this end, several advances in speech enhancement, acoustic scene analysis as well as acoustic modeling, have recently contributed to improve the state-of-the-art in the field. One of the most effective approaches to derive a robust acoustic modeling is based on using contaminated speech, which proved helpful in reducing the acoustic mismatch between training and testing conditions. In this pa...
Doctor en Ingeniería EléctricaIn this thesis an uncertainty weighting scheme for deep neural network...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
This paper addresses the problem of hands-free speech recognition in a noisy office environment. An ...
A challenging scenario is addressed in which a distant-talking speech recognizer operates in a noisy...
Deep learning is an emerging technology that is considered one of the most promising directions for ...
Distant-speech recognition represents a technology of fundamental importance for future development ...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
Challenging scenario is addressed in which a hands-free speech recognizer operates in a noisy office...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
Distant speech recognition is being revolutionized by deep learning, that has contributed to signifi...
Improving distant speech recognition is a crucial step towards flexible human-machine interfaces. Cu...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
AbstractThis paper examines the individual and combined impacts of various front-end approaches on t...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
Training acoustic models for ASR requires large amounts of labelled data which is costly to obtain. ...
Doctor en Ingeniería EléctricaIn this thesis an uncertainty weighting scheme for deep neural network...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
This paper addresses the problem of hands-free speech recognition in a noisy office environment. An ...
A challenging scenario is addressed in which a distant-talking speech recognizer operates in a noisy...
Deep learning is an emerging technology that is considered one of the most promising directions for ...
Distant-speech recognition represents a technology of fundamental importance for future development ...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
Challenging scenario is addressed in which a hands-free speech recognizer operates in a noisy office...
This paper examines the individual and combined impacts of various front-end approaches on the perfo...
Distant speech recognition is being revolutionized by deep learning, that has contributed to signifi...
Improving distant speech recognition is a crucial step towards flexible human-machine interfaces. Cu...
In this paper, a new robust training algorithm is proposed for the generation of a set of bias-remov...
AbstractThis paper examines the individual and combined impacts of various front-end approaches on t...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
Training acoustic models for ASR requires large amounts of labelled data which is costly to obtain. ...
Doctor en Ingeniería EléctricaIn this thesis an uncertainty weighting scheme for deep neural network...
Over the past few decades, a range of front-end techniques have been proposed to improve the robustn...
This paper addresses the problem of hands-free speech recognition in a noisy office environment. An ...