This paper presents an improved transfer learning framework applied to robust personalised speech recognition models for speakers with dysarthria. As the baseline of transfer learning, a state-of-theart CNN-TDNN-F ASR acoustic model trained solely on source domain data is adapted onto the target domain via neural network weight adaptation with the limited available data from target dysarthric speakers. Results show that linear weights in neural layers play the most important role for an improved modelling of dysarthric speech evaluated using UASpeech corpus, achieving averaged 11.6% and 7.6% relative recognition improvement in comparison to the conventional speaker-dependent training and data combination, respectively. To further improve th...
Acoustic modelling for automatic dysarthric speech recognition (ADSR) is a challenging task. Data de...
Raw waveform acoustic modelling has recently received increasing attention. Compared with the task-b...
In this paper, we investigate unsupervised acoustic model training approaches for dysarthric-speech ...
This paper presents an improved transfer learning framework applied to robust personalised speech re...
In light of steady progress in machine learning, automatic speech recognition (ASR) is entering more...
This work addresses the mismatch problem between the distribution of training data (source) and test...
Millions of individuals have acquired or have been born with neuro-motor conditions that limit the c...
The final publication is available at https://link.springer.com/chapter/10.1007%2F978-3-319-49169-1_...
Speech production errors characteristic of dysarthria are chiefly responsible for the low accuracy o...
Dysarthria is a neurological speech disorder, which exhibits multi-fold disturbances in the speech p...
Acoustic modelling for automatic dysarthric speech recognition (ADSR) is a challenging task. Data de...
The need for automated speech recognition has expanded as a result of significant industrial expansi...
This thesis explores deep learning techniques to improve Automatic Speech Recognition (ASR) for peop...
Negative transfer in training of acoustic models for automatic speech recognition has been reported ...
Developing automatic speech recognition (ASR) systems that recognise dysarthric speech as well as co...
Acoustic modelling for automatic dysarthric speech recognition (ADSR) is a challenging task. Data de...
Raw waveform acoustic modelling has recently received increasing attention. Compared with the task-b...
In this paper, we investigate unsupervised acoustic model training approaches for dysarthric-speech ...
This paper presents an improved transfer learning framework applied to robust personalised speech re...
In light of steady progress in machine learning, automatic speech recognition (ASR) is entering more...
This work addresses the mismatch problem between the distribution of training data (source) and test...
Millions of individuals have acquired or have been born with neuro-motor conditions that limit the c...
The final publication is available at https://link.springer.com/chapter/10.1007%2F978-3-319-49169-1_...
Speech production errors characteristic of dysarthria are chiefly responsible for the low accuracy o...
Dysarthria is a neurological speech disorder, which exhibits multi-fold disturbances in the speech p...
Acoustic modelling for automatic dysarthric speech recognition (ADSR) is a challenging task. Data de...
The need for automated speech recognition has expanded as a result of significant industrial expansi...
This thesis explores deep learning techniques to improve Automatic Speech Recognition (ASR) for peop...
Negative transfer in training of acoustic models for automatic speech recognition has been reported ...
Developing automatic speech recognition (ASR) systems that recognise dysarthric speech as well as co...
Acoustic modelling for automatic dysarthric speech recognition (ADSR) is a challenging task. Data de...
Raw waveform acoustic modelling has recently received increasing attention. Compared with the task-b...
In this paper, we investigate unsupervised acoustic model training approaches for dysarthric-speech ...