High-Order Sparse Linear Predictors for Audio Processing

Daniele Giacobello, Toon van Waterschoot, Mads Græsbøll Christensen, Søren Holdt Jensen, Marc Moonen

Research output: Contribution to journalConference article in JournalResearchpeer-review

10 Citations (Scopus)
410 Downloads (Pure)

Abstract

Linear prediction has generally failed to make a breakthrough in audio processing, as it has done in speech processing. This is mostly due to its poor modeling performance, since an audio signal is usually an ensemble of different sources. Nevertheless, linear prediction comes with a whole set of interesting features that make the idea of using it in audio processing not far fetched, e.g., the strong ability of modeling the spectral peaks that play a dominant role in perception. In this paper, we provide some preliminary conjectures and experiments on the use of high-order sparse linear predictors in audio processing. These predictors, successfully implemented in modeling the short-term and long-term redundancies present in speech signals, will be used to model tonal audio signals, both monophonic and polyphonic. We will show how the sparse predictors are able to model efficiently the different components of the spectrum of an audio signal, i.e., its tonal behavior and the spectral
envelope characteristic.
Original languageEnglish
JournalProceedings of the European Signal Processing Conference
Volume2010
Pages (from-to)234-238
ISSN2076-1465
Publication statusPublished - 2010
EventEuropean Signal Processing Conference 2010 - Aalborg, Denmark
Duration: 23 Aug 201027 Aug 2010

Conference

ConferenceEuropean Signal Processing Conference 2010
Country/TerritoryDenmark
CityAalborg
Period23/08/201027/08/2010

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