z-logo
open-access-imgOpen Access
Parkinson’s Diagnosis through Compressed Speech Signals at remote Locations
Author(s) -
Adil Pervaiz,
Ammar Tahir
Publication year - 2020
Publication title -
pacific international journal
Language(s) - English
Resource type - Journals
eISSN - 2663-8991
pISSN - 2616-4825
DOI - 10.55014/pij.v3i2.94
Subject(s) - computer science , support vector machine , codec , speech recognition , artificial neural network , speech coding , gsm , process (computing) , artificial intelligence , compressed sensing , voice activity detection , cloud computing , speech processing , machine learning , computer hardware , telecommunications , operating system
Rapid increase in Parkinson’s disease all over the world before the age of 60’s is alarming. Parkinson’s affects the neurological controls of human body. In this paper we intend to adopt machine based learning to automate the diagnosis of Parkinson’s disease with help of compressed speech signals sent via network. An advanced Solution is proposed to automate the diagnosis process more rapid than that of ordinary process. In this study Speech samples from 55 subjects have been collected, 43 with Parkinson Disease and 12 Healthy subjects. Speech signals from clients captured from various sensors and devices transmitted to the cloud for processing. In the cloud Speech samples are compressed using compression codecs MP3, MP4, G.722, G.226, GSM-EFR, AMR-WB, SVOPC/SILK, and OPUS, and then same are diagnosed without compression impact and deliver accurate results. Three classifiers SVM (Support Vector Machine), NN (Neural Network), and GA (Genetic Algorithm) are applied and calculated accurate results as compared with compressed and un-compressed voice samples. Successful experiments enabled us to achieve 90.7% accuracy. Same process can be used for online and social media applications which are available in portable devices as well.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here