Recurrence Quantification Analysis of Glottal Signal as non Linear Tool for Pathological Voice Assessment and Classification
Mohamed Dahmani and Mhania Guerti
Laboratoire
Signal et Communications, Ecole Nationale Polytechnique, Algiers, Algeria
Abstract: Automatic detection and assessment of Vocal Folds
pathologies using signal processing techniques knows an extensively challenge
use in the voice or speech research community.
This paper contributes the application of the Recurrence Quantification
Analysis (RQA) to a glottal signal waveform in order
to evaluate the dynamic process of Vocal Folds (VFs) for diagnosis and classify
the voice disorders. The proposed solution starts by extracting
the glottal signal waveform from the voice signal through
an inverse filtering algorithm. In the next step, the parameters of RQA are
determined via the
Recurrent
Plot (RP) structure of the glottal signal where the normal voice is considered
as a reference. Finally, these
parameters are used as input features set of a hybrid Particle Swarm
Optimization-Support Vector Machines
(PSO-SVM) algorithms to segregate between normal and pathological voices. For
the test validation,
we have adopted the collection of Saarbrucken Voice Database (SVD) where we
have selected the
long vowel /a:/ of 133 normal samples and 260 pathological samples uttered by
four groups of subjects :
persons having suffered from vocal folds paralysis, persons having vocal folds
polyps, persons having
spasmodic dysphonia and normal voices. The
obtained results show the effectiveness of RQA applied to the glottal signal as
a features extraction technique. Indeed, the PSO-SVM as a classification method
presented an effective
tool for assessment and diagnosis of pathological voices with an accuracy of
97.41%.
Keywords: Glottal Signal, Recurrence Quantification
Analysis, Saarbrucken Voice Database, PSO-SVM, Pathological Voice Detection.
Received
December 2, 2018; accepted March 23, 2020