Part of the Communications in Computer and Information Science book series (CCIS, volume 1087).In this work, we compare different neural network architectures, for the task of mapping spectral coefficients of noisy speech signals with those corresponding to natural speech. In previous works on the subject, fully-connected multilayer perception (MLP) networks and recurrent neural networks (LSTM & BLSTM) have been used. Several references report some initial trial and error processes to determine which architecture to use. Finding the best network type and size is of great importance due to the considerable training time required by some models of recurrent networks. In our work, we conducted extensive tests training more than five hundred ne...
Throat microphone is robust to the surrounding noise and can even pick up whispers; however, speech ...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11289).In this paper, we car...
This paper presents two connectionist approaches to spectral mapping for speaker normalization. The ...
Speech signals are degraded in real-life environments, as a product of background noise or other fac...
This dissertation will investigate various methods of noise reduction in speech signals using back p...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
The objective of this work is to study the suitability of existing spectral mapping methods for enha...
The objective of this work is to study the suitability of existing spectral mapping methods for enha...
A set of recurrent artificial neural networks are used for speech recognition. By representing speec...
Part of the Lecture Notes in Computer Science book series (LNCS, volume 12088).The quality of speech...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
Throat microphone is robust to the surrounding noise and can even pick up whispers; however, speech ...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11289).In this paper, we car...
This paper presents two connectionist approaches to spectral mapping for speaker normalization. The ...
Speech signals are degraded in real-life environments, as a product of background noise or other fac...
This dissertation will investigate various methods of noise reduction in speech signals using back p...
The project is an exploration of the field of Artificial Intelligence, especially Artificial Neural ...
The objective of this work is to study the suitability of existing spectral mapping methods for enha...
The objective of this work is to study the suitability of existing spectral mapping methods for enha...
A set of recurrent artificial neural networks are used for speech recognition. By representing speec...
Part of the Lecture Notes in Computer Science book series (LNCS, volume 12088).The quality of speech...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
Throat microphone is robust to the surrounding noise and can even pick up whispers; however, speech ...
End-to-end speech recognition is the problem of mapping raw audio signal all the way to text. In doi...
A neural network based model is developed to quantify speech intelligibility by blind-estimating spe...