International audienceApart from the impressive performance it has achieved in several tasks, one of the most important factors remaining for the continuous progress of deep learning is the increased work related to interpretability, especially in a medical context. In a recent work, we presented competitive performance achieved with a CNN-based model trained on normal speech for the French phone classification and how it correlates well with different perceptual measures when exposed to disordered speech. This paper extends that work by focusing on interpretability. Here, the goal is to get insights into the way in which neural representations shape the final task of phone classification so that it can be used further to explain the loss o...
In this paper, we investigate the connection between how people understand speech and how speech is ...
Speech-based automatic approaches for detecting neurodegenerative disorders (ND) and mild cognitive ...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
International audienceApart from the impressive performance it has achieved in several tasks, one of...
International audienceThe popularity of Deep Neural Networks (DNNs) is growing significantly, and so...
International audienceRecently, we have proposed a general analytical framework, called Neuro-based ...
International audienceThe popularity of deep neural networks (DNNs) continues to grow, as does the i...
Lesions in the brain resulting from traumatic injuries or strokes can evolve into speech dysfunction...
International audienceA deep convolutional neural network was trained to classify 45 speakers based ...
Voice acoustic analysis can be a valuable and objective tool supporting the diagnosis of many neurod...
Loss of speech intelligibility is commonly found in the post-treatment of conditions that affect the...
A speech problem can be caused by different reasons, from psychological to organic. The existing dia...
Speech impairment analysis and processing technologies have evolved substantially in recent years, a...
The work consists in a classification problem of four classes of vocal pathologies using one Deep Ne...
IEEE Deep learning approaches yield state-of-the-art performance in a range of tasks, including auto...
In this paper, we investigate the connection between how people understand speech and how speech is ...
Speech-based automatic approaches for detecting neurodegenerative disorders (ND) and mild cognitive ...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...
International audienceApart from the impressive performance it has achieved in several tasks, one of...
International audienceThe popularity of Deep Neural Networks (DNNs) is growing significantly, and so...
International audienceRecently, we have proposed a general analytical framework, called Neuro-based ...
International audienceThe popularity of deep neural networks (DNNs) continues to grow, as does the i...
Lesions in the brain resulting from traumatic injuries or strokes can evolve into speech dysfunction...
International audienceA deep convolutional neural network was trained to classify 45 speakers based ...
Voice acoustic analysis can be a valuable and objective tool supporting the diagnosis of many neurod...
Loss of speech intelligibility is commonly found in the post-treatment of conditions that affect the...
A speech problem can be caused by different reasons, from psychological to organic. The existing dia...
Speech impairment analysis and processing technologies have evolved substantially in recent years, a...
The work consists in a classification problem of four classes of vocal pathologies using one Deep Ne...
IEEE Deep learning approaches yield state-of-the-art performance in a range of tasks, including auto...
In this paper, we investigate the connection between how people understand speech and how speech is ...
Speech-based automatic approaches for detecting neurodegenerative disorders (ND) and mild cognitive ...
Speech recognition is one of the most important problems in artificial intelligence today. Despite n...