Dysarthria is a neurological speech disorder, which exhibits multi-fold disturbances in the speech production system of an individual and can have a detrimental effect on the speech output. In addition to the data sparseness problems, dysarthric speech is characterised by inconsistencies in the acoustic space making it extremely challenging to model. This paper investigates a variety of baseline speaker independent (SI) systems and its suitability for adaptation. The study also explores the usefulness of speaker adaptive training (SAT) for implicitly annihilating inter-speaker variations in a dysarthric corpus. The paper implements a hybrid MLLR-MAP based approach to adapt the SI and SAT systems. ALL the results reported uses UASPEECH dysar...
This work addresses the mismatch problem between the distribution of training data (source) and test...
Dysarthria is a motor speech disorder caused by damage to the nervous system. People with dysarthria...
There has been much recent interest in building continuous speech recognition systems for people wi...
Speech production errors characteristic of dysarthria are chiefly responsible for the low accuracy o...
Speech production errors characteristic of dysarthria are chiefly responsible for the low accuracy o...
Automatic speech recognition (ASR) is currently used in many assistive technologies, such as helping...
Automatic speech recognition (ASR) is currently used in many assistive technologies, such as helping...
Automatic speech recognition (ASR) is currently used in many assistive technologies, such as helping...
Dysarthria is a motor speech disorder characterized by weakness, paralysis, or poor coordination of ...
In light of steady progress in machine learning, automatic speech recognition (ASR) is entering more...
This paper presents an improved transfer learning framework applied to robust personalised speech re...
Millions of individuals have acquired or have been born with neuro-motor conditions that limit the c...
Millions of individuals have acquired or have been born with neuro-motor conditions that limit the c...
This work addresses the mismatch problem between the distribution of training data (source) and test...
This work addresses the mismatch problem between the distribution of training data (source) and test...
This work addresses the mismatch problem between the distribution of training data (source) and test...
Dysarthria is a motor speech disorder caused by damage to the nervous system. People with dysarthria...
There has been much recent interest in building continuous speech recognition systems for people wi...
Speech production errors characteristic of dysarthria are chiefly responsible for the low accuracy o...
Speech production errors characteristic of dysarthria are chiefly responsible for the low accuracy o...
Automatic speech recognition (ASR) is currently used in many assistive technologies, such as helping...
Automatic speech recognition (ASR) is currently used in many assistive technologies, such as helping...
Automatic speech recognition (ASR) is currently used in many assistive technologies, such as helping...
Dysarthria is a motor speech disorder characterized by weakness, paralysis, or poor coordination of ...
In light of steady progress in machine learning, automatic speech recognition (ASR) is entering more...
This paper presents an improved transfer learning framework applied to robust personalised speech re...
Millions of individuals have acquired or have been born with neuro-motor conditions that limit the c...
Millions of individuals have acquired or have been born with neuro-motor conditions that limit the c...
This work addresses the mismatch problem between the distribution of training data (source) and test...
This work addresses the mismatch problem between the distribution of training data (source) and test...
This work addresses the mismatch problem between the distribution of training data (source) and test...
Dysarthria is a motor speech disorder caused by damage to the nervous system. People with dysarthria...
There has been much recent interest in building continuous speech recognition systems for people wi...