Multicomponent noisy signal adaptive instantaneous frequency estimation using components time support information

Sucic, Victor, Lerga, Jonatan and Boashash, Boualem (2014) Multicomponent noisy signal adaptive instantaneous frequency estimation using components time support information. IET Signal Processing, 8 3: 277-284. doi:10.1049/iet-spr.2013.0349


Author Sucic, Victor
Lerga, Jonatan
Boashash, Boualem
Title Multicomponent noisy signal adaptive instantaneous frequency estimation using components time support information
Journal name IET Signal Processing   Check publisher's open access policy
ISSN 1751-9683
1751-9675
Publication date 2014-05-01
Year available 2014
Sub-type Article (original research)
DOI 10.1049/iet-spr.2013.0349
Open Access Status Not Open Access
Volume 8
Issue 3
Start page 277
End page 284
Total pages 8
Place of publication Herts, United Kingdom
Publisher Institution of Engineering and Technology
Language eng
Abstract This study proposes an adaptive method for components instantaneous frequency (IF) estimation of noisy non-stationary multicomponent signals, combined with the components time-support estimation method based on the shorttime Rényi entropy (STRE). Components localisation and separation are done using a double-direction component tracking and extraction method presented here, while the IF estimation is done using the adaptive algorithms based on the intersection of confidence intervals (ICI) rule and the relative intersection of confidence intervals (RICI) rule. The results obtained using the ICI and RICI rules are compared for various window types, signal-to-noise ratios and time-frequency distributions, both with and without using the information on components time support. Most of the errors in IF estimation using the ICI and RICI-based methods are caused by imprecise components time-support estimation. The proposed methods combined with the STRE have achieved a significant accuracy improvement in terms of the mean absolute error and the mean squared error, reducing them by up to 73 and 93%, respectively. The method has been applied to real-life signals and proven to be an efficient tool for IF estimation of noisy non-stationary multicomponent signals.
Q-Index Code C1
Q-Index Status Confirmed Code
Institutional Status UQ

Document type: Journal Article
Sub-type: Article (original research)
Collections: UQ Centre for Clinical Research Publications
Official 2015 Collection
 
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