A simple but efficient voice activity detection algorithm through Hilbert transform and dynamic threshold for speech pathologies
Fecha
2016-01-01
Autores
Ortiz, P.D.
Villa, L.F.
Salazar, C.
Quintero, O.L.
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ISSN de la revista
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Editor
IOP PUBLISHING LTD
Resumen
A simple but efficient voice activity detector based on the Hilbert transform and a dynamic threshold is presented to be used on the pre-processing of audio signals. The algorithm to define the dynamic threshold is a modification of a convex combination found in literature. This scheme allows the detection of prosodic and silence segments on a speech in presence of non-ideal conditions like a spectral overlapped noise. The present work shows preliminary results over a database built with some political speech. The tests were performed adding artificial noise to natural noises over the audio signals, and some algorithms are compared. Results will be extrapolated to the field of adaptive filtering on monophonic signals and the analysis of speech pathologies on futures works.