Journal of Signal and Information Processing

Volume 5, Issue 1 (February 2014)

ISSN Print: 2159-4465   ISSN Online: 2159-4481

Google-based Impact Factor: 1.19  Citations  

Classification of Normal and Pathological Voice Using SVM and RBFNN

HTML  Download Download as PDF (Size: 846KB)  PP. 1-7  
DOI: 10.4236/jsip.2014.51001    5,813 Downloads   9,063 Views  Citations

ABSTRACT

The identification and classification of pathological voice are still a challenging area of research in speech processing. Acoustic features of speech are used mainly to discriminate normal voices from pathological voices. This paper explores and compares various classification models to find the ability of acoustic parameters in differentiating normal voices from pathological voices. An attempt is made to analyze and to discriminate pathological voice from normal voice in children using different classification methods. The classification of pathological voice from normal voice is implemented using Support Vector Machine (SVM) and Radial Basis Functional Neural Network (RBFNN). The normal and pathological voices of children are used to train and test the classifiers. A dataset is constructed by recording speech utterances of a set of Tamil phrases. The speech signal is then analyzed in order to extract the acoustic parameters such as the Signal Energy, pitch, formant frequencies, Mean Square Residual signal, Reflection coefficients, Jitter and Shimmer. In this study various acoustic features are combined to form a feature set, so as to detect voice disorders in children based on which further treatments can be prescribed by a pathologist. Hence, a successful pathological voice classification will enable an automatic non-invasive device to diagnose and analyze the voice of the patient.

Share and Cite:

V. Sellam and J. Jagadeesan, "Classification of Normal and Pathological Voice Using SVM and RBFNN," Journal of Signal and Information Processing, Vol. 5 No. 1, 2014, pp. 1-7. doi: 10.4236/jsip.2014.51001.

Cited by

[1] A novel convolutional neural network based dysphonic voice detection algorithm using chromagram.
… Journal of Electrical & Computer Engineering …, 2022
[2] Applications of artificial intelligence to neurological disorders: current technologies and open problems
… Disorder Prediction and …, 2022
[3] Deep learning in automatic detection of dysphonia: Comparing acoustic features and developing a generalizable framework
International Journal of …, 2022
[4] A Novel Pathological Voice Identification Technique through Simulated Cochlear Implant Processing Systems
Raheem, M Tarique - Applied Sciences, 2022
[5] RS-MSConvNet: A Novel End-to-End Pathological Voice Detection Model
IEEE …, 2022
[6] Classification of pathological disorders using optimization enabled deep neuro fuzzy network
Biomedical Signal Processing and …, 2022
[7] Voice pathology detection using convolutional neural networks with electroglottographic (EGG) and speech signals
Raheem, M Tarique - Computer Methods and Programs …, 2022
[8] Classification of three pathological voices based on specific features groups using support vector machine.
Ghraibah - International Journal of Electrical & …, 2022
[9] 13 A Comparative and
… and Applications in …, 2022
[10] Automatic Detection of Parkinson's Disease Using Human Voice and Artificial Intelligence
2022
[11] Spasmodic Dysphonia Detection Using Machine Learning Classifiers
… International Conference on …, 2021
[12] Ag2Se Nanowire Network as an Effective In-Materio Reservoir Computing Device
2021
[13] Analysis of IoT interventions to solve voice pathologies challenges
High Performance …, 2021
[14] A Machine Learning-Based Voice Analysis for the Detection of Dysphagia Biomarkers
… on Metrology for …, 2021
[15] Detection of major depressive disorder using vocal acoustic analysis and machine learning—an exploratory study
2021
[16] A comparative and comprehensive study of prediction of parkinson's disease
Indonesian Journal of …, 2021
[17] A Survey of Voice Pathology Surveillance Systems Based on Internet of Things and Machine Learning Algorithms
2020
[18] Prediction of Specific Language Impairment in Children Using Speech Linear Predictive Coding Coefficients
2020
[19] A Survey on Signal Processing Based Pathological Voice Detection Techniques
2020
[20] Voice Signal Analysis with the Application in Biomedicine
2020
[21] Detecção de patologias laríngeas por meio da análise de sinais de voz utilizando Deep Neural Networks
2020
[22] Classification of Pathological and Healthy Voice Using Perceptual Wavelet Packet Decomposition and Support Vector Machine
2020
[23] Vocal Acoustic Analysis: ANN Versos SVM in Classification of Dysphonic Voices and Vocal Cords Paralysis
2020
[24] Glottal Signal Analysis for Voice Pathology
2019
[25] A Preliminary Receiver Operating Characteristic Analysis on Voice Handicap Index Results of the Greek Voice-Disordered Patients
2018
[26] Investigation of glottal flow parameters for voice pathology detection on SVD and MEEI databases
2018
[27] Voice Feature Analysis for Early Detection of Voice Disability in Children
2018
[28] 云端融合的神经系统疾病多通道辅助诊断研究
2017
[29] Recent Survey on Feature Extraction Methods for Voice Pathology and Voice Disorder
2017
[30] Vocal Acoustic Analysis–Classification of Dysphonic Voices with Artificial Neural Networks
Procedia Computer Science, 2017
[31] Synthesis of pathological voices and experiments on the effect of jitter and shimmer in voice quality perception
2017
[32] Multimodal aided neurological disease diagnosis with synergy of cloud and client
Sci Sin Inform, 2017
[33] 基于多尺度重采样思想的类指数核函数构造
电子与信息学报, 2016
[34] Pathological voices detection using Support Vector Machine
2016
[35] An incremental method combining density clustering and support vector machines for voice pathology detection
Computers & Electrical Engineering, 2016
[36] Cancer larynx detection using glottal flow parameters and statistical tools
2016
[37] Diagnóstico inteligente de patologias da laringe
2016
[38] Design of an exponential-like kernel function based on multi-scale resampling
2016
[39] A Survey of Machine Learning Based Approaches for Parkinson Disease Prediction
2015
[40] A Study on Male Voice Mutation
2015
[41] Voice signal features analysis and classification: looking for new diseases related parameters
Proceedings of the 6th ACM Conference on Bioinformatics, Computational Biology and Health Informatics, 2015
[42] Vocal Features for Glottal Pathology Detection using BPNN
International Journal of Computer Applications, 2015
[43] Glottal pathology discrimination using ANN and SVM
Advances in Computing, Communications and Informatics (ICACCI), 2015 International Conference on, 2015
[44] Automatic Control Music Amplifier Using Speech Signal Utilizing by TMS320C6713
Electronics Symposium (IES), 2015 International, 2015
[45] Expert System for Diagnosing Parkinson Disease Using Two Stage Feature Selection Algorithms

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.