ARTICLE
TITLE

PITCH PERIOD ESTIMATION METHOD USING EMPIRICAL WAVELET TRANSFORM

SUMMARY

Pitch period evaluation of speech signal is used in many important applications of speech technology. However, among the existingmethods only some can work in case of non-linear and non-stationary signals. The main reason is that the pitch detection methods are basedon the assumption that speech production process is linear. Selection of pitch period estimation algorithm is always focuses on finding acompromise between time and frequency resolution, robustness, computational complexity and time delay. The aim of this paper is to develop a new method for estimating the pitch period based on empirical wavelet transformation. Method of constructing a family of adapted wavelets assumes that the filters depend on the information location in speech spectrum of the analyzed signal. Empirical wavelets are defined asbandpass filters for each segment of the speech signal. Instantaneous frequency characteristics are considered as pitch period detection features.Teager-Kaiser energy separation operator is used for its extraction. The comparison of this method with other pitch estimation algorithms ispresented.

 Articles related

Rene Borroto,Jessica Pavlick,Karl Soetebier,Bill Williamson,Patrick Pitcher,Cherie Drenzek    

ObjectiveDescribe how the Georgia Department of Public Health (DPH) used data from its State Electronic Notifiable Disease Surveillance System (SendSS) Syndromic Surveillance (SS) module for early detection of an outbreak of salmonellosis in Camden Count... see more


Rene Borroto,Jessica Grippo,Karl Soetebier,Wendy Smith,Bill Williamson,Patrick Pitcher,Lance Ballester,Cherie Drenzek    

Objective: To describe how the Georgia Department of Public Health (DPH) uses ICD-9 and ICD-10-based discharge diagnoses (DDx) codes assigned to Emergency Department (ED) patients to support the early detection and investigation of outbreaks, clusters, a... see more


Lance Ballester,Karl Soetebier,Bill Williamson,Rene Borroto,Jessica Grippo,Patrick Pitcher,Cherie Drenzek    

ObjectiveTo explore the timeliness of emergency room surveillance data after the advent of federal Meaningful Use initiatives and determine potential areas for improvement.IntroductionTimeliness of emergency room (ER) data is arguably its strongest attri... see more