Contraction (operator theory): Difference between revisions

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The '''spectral centroid''' is a measure used in [[digital signal processing]] to characterise a [[spectrum]]. It indicates where the "center of mass" of the spectrum is. Perceptually, it has a robust connection with the impression of "brightness" of a sound.<ref name="greygordon78">Grey, J. M., Gordon, J. W., 1978. Perceptual effects of spectral modifications on musical timbres. Journal of the Acoustical Society of America 63 (5), 1493–1500, {{doi|10.1121/1.381843}}</ref>
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It is calculated as the [[weighted mean]] of the frequencies present in the signal, determined using a [[Fourier transform]], with their magnitudes as the weights:<ref>[http://recherche.ircam.fr/equipes/analyse-synthese/peeters/ARTICLES/Peeters_2003_cuidadoaudiofeatures.pdf A Large Set of Audio Features for Sound Description] - technical report published by [[IRCAM]] in 2003. Section 6.1.1 describes the spectral centroid.</ref>
 
:<math>
Centroid = \frac{
  \sum_{n=0}^{N-1}
    f \left ( n \right )
    x \left ( n \right )
} {
  \sum_{n=0}^{N-1}
    x \left ( n \right )
}
</math>
 
where ''x(n)'' represents the weighted frequency value, or magnitude, of [[Histogram|bin]] number ''n'', and ''f(n)'' represents the center frequency of that bin.
 
==Alternative usage==
 
Some people use "spectral centroid" to refer to the [[median]] of the spectrum. This is a ''different'' statistic, the difference being essentially the same as the difference between the unweighted median and [[mean]] statistics. Since both are [[Average|measures of central tendency]], in some situations they will exhibit some similarity of behaviour. But since typical audio spectra are not [[normal distribution|normally distributed]], the two measures will often give strongly different values. Grey and Gordon in 1978 found the mean a better fit than the median.<ref name="greygordon78"/>
 
==Applications==
 
Because the spectral centroid is a good predictor of the "brightness" of a sound,<ref name="greygordon78"/> it is widely used in digital audio and music processing as an automatic measure of musical [[timbre]].<ref>
{{cite conference
| last1      = Schubert
| first1    = Emery
| last2      = Wolfe
| first2    = Joe
| last3      = Tarnopolsky
| first3    = Alex
| others    = Lipscomb, S.D.; Ashley, R.; Gjerdingen, R. O.; Webster, P. (Eds.)
| year      = 2004
| url        = http://icmpc8.umn.edu/proceedings/ICMPC8/PDF/AUTHOR/MP040215.PDF
| title      = Spectral centroid and timbre in complex, multiple instrumental textures
| conference = International Conference on Music Perception & Cognition
| conferenceurl = http://www.icmpc8.umn.edu/index_all.htm
| booktitle  = Proceedings of the 8th International Conference on Music Perception & Cognition, North Western University, Illinois
| publisher  = School of Music and Music Education; School of Physics, University of New South Wales
| location  = Sydney, Australia
}}</ref>
 
==References==
<references/>
 
[[Category:Digital signal processing]]
 
 
{{Signal-processing-stub}}

Latest revision as of 00:08, 18 November 2014

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