In previous work, we described how learning the pattern of recognition errors made by an individual using a certain ASR system leads to increased recognition accuracy compared with a standard MLLR adaptation approach. This was the case for low-intelligibility speakers with dysarthric speech, but no improvement was observed for normal speakers. In this paper, we describe an alternative method for obtaining the training data for confusion-matrix estimation for normal speakers which is more effective than our previous technique. We also address the issue of data sparsity in estimation of confusion-matrices by using non-negative matrix factorization (NMF) to discover structure within them. The confusion-matrix estimates made using these techniq...
Standard speaker adaptation algorithms perform poorly on dysarthric speech because of the limited ph...
International audienceIt is well-known that human listeners significantly outperform machines when i...
As a result of advancement in deep learning and neural network technology, end-to-end models have be...
Dysarthria is a motor speech disorder characterized by weakness, paralysis, or poor coordination of ...
Confusion matrices have been widely used to increase the accuracy of speech recognisers, but usually...
Dysarthria is a motor speech disorder characterized by weakness, paralysis, or poor coordination of ...
International audienceTo enhance the recognition lexicon, it is important to be able to add pronunci...
Thesis (Ph.D.)--University of Washington, 2021Considering the complexity of speech communicatio...
International audienceThe paper proposes a new approach for a posteriori enrichment of automatic spe...
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...
Confusion matrices have been widely used to increase the ac-curacy of speech recognisers, but usuall...
Abstract In this paper, we focus on the problems associated with error correction of automatic speec...
Training domain-specific automatic speech recognition (ASR) systems requires a suitable amount of da...
Standard speaker adaptation algorithms perform poorly on dysarthric speech because of the limited ph...
International audienceIt is well-known that human listeners significantly outperform machines when i...
As a result of advancement in deep learning and neural network technology, end-to-end models have be...
Dysarthria is a motor speech disorder characterized by weakness, paralysis, or poor coordination of ...
Confusion matrices have been widely used to increase the accuracy of speech recognisers, but usually...
Dysarthria is a motor speech disorder characterized by weakness, paralysis, or poor coordination of ...
International audienceTo enhance the recognition lexicon, it is important to be able to add pronunci...
Thesis (Ph.D.)--University of Washington, 2021Considering the complexity of speech communicatio...
International audienceThe paper proposes a new approach for a posteriori enrichment of automatic spe...
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...
Confusion matrices have been widely used to increase the ac-curacy of speech recognisers, but usuall...
Abstract In this paper, we focus on the problems associated with error correction of automatic speec...
Training domain-specific automatic speech recognition (ASR) systems requires a suitable amount of da...
Standard speaker adaptation algorithms perform poorly on dysarthric speech because of the limited ph...
International audienceIt is well-known that human listeners significantly outperform machines when i...
As a result of advancement in deep learning and neural network technology, end-to-end models have be...