Saved in:
Bibliographic Details
Main Authors: Liu, Xiaokang, Du, Xiaoxia, Liu, Juan, Su, Rongfeng, Ng, Manwa Lawrence, Zhang, Yumei, Yang, Yudong, Zhao, Shaofeng, Wang, Lan, Yan, Nan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.03254
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910436602937344
author Liu, Xiaokang
Du, Xiaoxia
Liu, Juan
Su, Rongfeng
Ng, Manwa Lawrence
Zhang, Yumei
Yang, Yudong
Zhao, Shaofeng
Wang, Lan
Yan, Nan
author_facet Liu, Xiaokang
Du, Xiaoxia
Liu, Juan
Su, Rongfeng
Ng, Manwa Lawrence
Zhang, Yumei
Yang, Yudong
Zhao, Shaofeng
Wang, Lan
Yan, Nan
contents Automatic assessment of dysarthria remains a highly challenging task due to high variability in acoustic signals and the limited data. Currently, research on the automatic assessment of dysarthria primarily focuses on two approaches: one that utilizes expert features combined with machine learning, and the other that employs data-driven deep learning methods to extract representations. Research has demonstrated that expert features are effective in representing pathological characteristics, while deep learning methods excel at uncovering latent features. Therefore, integrating the advantages of expert features and deep learning to construct a neural network architecture based on expert knowledge may be beneficial for interpretability and assessment performance. In this context, the present paper proposes a vowel graph attention network based on audio-visual information, which effectively integrates the strengths of expert knowledges and deep learning. Firstly, various features were combined as inputs, including knowledge based acoustical features and deep learning based pre-trained representations. Secondly, the graph network structure based on vowel space theory was designed, allowing for a deep exploration of spatial correlations among vowels. Finally, visual information was incorporated into the model to further enhance its robustness and generalizability. The method exhibited superior performance in regression experiments targeting Frenchay scores compared to existing approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2405_03254
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automatic Assessment of Dysarthria Using Audio-visual Vowel Graph Attention Network
Liu, Xiaokang
Du, Xiaoxia
Liu, Juan
Su, Rongfeng
Ng, Manwa Lawrence
Zhang, Yumei
Yang, Yudong
Zhao, Shaofeng
Wang, Lan
Yan, Nan
Audio and Speech Processing
Automatic assessment of dysarthria remains a highly challenging task due to high variability in acoustic signals and the limited data. Currently, research on the automatic assessment of dysarthria primarily focuses on two approaches: one that utilizes expert features combined with machine learning, and the other that employs data-driven deep learning methods to extract representations. Research has demonstrated that expert features are effective in representing pathological characteristics, while deep learning methods excel at uncovering latent features. Therefore, integrating the advantages of expert features and deep learning to construct a neural network architecture based on expert knowledge may be beneficial for interpretability and assessment performance. In this context, the present paper proposes a vowel graph attention network based on audio-visual information, which effectively integrates the strengths of expert knowledges and deep learning. Firstly, various features were combined as inputs, including knowledge based acoustical features and deep learning based pre-trained representations. Secondly, the graph network structure based on vowel space theory was designed, allowing for a deep exploration of spatial correlations among vowels. Finally, visual information was incorporated into the model to further enhance its robustness and generalizability. The method exhibited superior performance in regression experiments targeting Frenchay scores compared to existing approaches.
title Automatic Assessment of Dysarthria Using Audio-visual Vowel Graph Attention Network
topic Audio and Speech Processing
url https://arxiv.org/abs/2405.03254