Music signal processing with application to recognition

Abstract

This thesis lays in the area of signal processing and analysis of music signals using computational methods for the extraction of effective representations for automatic recognition. We explore and develop efficient algorithms using nonlinear methods for the analysis of the structure of music signals, which is of importance for their modeling. Our main research directions deals with the analysis of the structure and the characteristics of musical instruments in order to gain insight about their function and properties. We study the characteristics of the different genres of music. Finally, we evaluate the effectiveness of the proposed nonlinear models for the detection of perceptually important music and audio events.The approach we follow contributes to state-of-the-art technologies related to automatic computer-based recognition of musical signals and audio summarization, which nowadays are essential in everyday life. Because of the vast amount of music, audio and multimedia data in ...
show more

All items in National Archive of Phd theses are protected by copyright.

DOI
10.12681/eadd/39405
Handle URL
http://hdl.handle.net/10442/hedi/39405
ND
39405
Alternative title
Επεξεργασία σημάτων μουσικής και εφαρμογές αναγνώρισης
Author
Zlatintsi, Athanasia (Father's name: Christos)
Date
2013
Degree Grantor
National Technical University of Athens (NTUA)
Committee members
Μαραγκός Πέτρος
Καραγιάννης Γεώργιος
Κόλλιας Στέφανος
Τζαφέστας Κωνσταντίνος
Ποταμιάνος Γεράσιμος
Πικράκης Άγγελος
Φωτεινέα Ευίτα-Σταυρούλα
Discipline
Natural SciencesComputer and Information Sciences
Engineering and TechnologyElectrical Engineering, Electronic Engineering, Information Engineering
Keywords
Music signal analysis; Timbre / instrument classification; Genre classification; Audio summarization; Fractals; Multiscale analysi; AM-FM modulations; Energy separation algorithm; Monomodal audio saliency
Country
Greece
Language
Greek
Description
xx, 152 σ., tbls., fig., ch.
Usage statistics
VIEWS
Concern the unique Ph.D. Thesis' views for the period 07/2018 - 07/2023.
Source: Google Analytics.
ONLINE READER
Concern the online reader's opening for the period 07/2018 - 07/2023.
Source: Google Analytics.
DOWNLOADS
Concern all downloads of this Ph.D. Thesis' digital file.
Source: National Archive of Ph.D. Theses.
USERS
Concern all registered users of National Archive of Ph.D. Theses who have interacted with this Ph.D. Thesis. Mostly, it concerns downloads.
Source: National Archive of Ph.D. Theses.
Related items (based on users' visits)