학술논문

Robust Assessment of Dysarthrophonic Voice with RASTA-PLP Features: A Nonlinear Spectral Measures
Document Type
Conference
Source
2023 2nd International Conference on Mechatronics and Electrical Engineering (MEEE) Mechatronics and Electrical Engineering (MEEE), 2023 2nd International Conference on. :74-78 Feb, 2023
Subject
Engineering Profession
Robotics and Control Systems
Support vector machines
Pathology
Machine learning algorithms
Signal processing algorithms
Artificial neural networks
Machine learning
Feature extraction
Accuracy
ANN
classifier
dysarthria
dysarthophonia
deep learning
machine learning
pathology
PLP
RASTA-PLP
speech
vocal disorder
Language
Abstract
This paper presents an artificial intelligence based speech signal processing technique to identify dysarthrophonic voice with relative spectral-perceptual linear prediction (RASTA-PLP) features. Dysarthria is a neural motor speech disorder caused by muscular weakness. Voice analysis of dysarthrophonic patients is challenging as this disease has multidimensional effects on the human voice generation system. Conventional spectral analysis is unable to accurately characterize the pathology associated with nonlinear dynamicity of human voice. This work investigates the suitability of RASTA-PLP features excerpted from speech signals to identify dysarthrophonic patients. The speech samples of healthy and dysarthrophonic patients are collected from the Saarbrücken Voice Database (SVD). Several machine learning and Artificial neural network (ANN) based algorithms are developed to evaluate the classification performance of the proposed system. The designed system can achieve excellent performance in terms of accuracy (100%) considering female and male subjects separately.