Power Spectral Density
FIR System Identification
Correlation Analysis
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The cross-correlation of a signal with itself gives its autocorrelation:
The autocorrelation function is Hermitian:
When
, its autocorrelation is
real and even (symmetric about lag 0).
The unbiased cross-correlation similarly reduces to an unbiased sample
autocorrelation when
:
 |
(8.2) |
The DFT of the true autocorrelation function
is the (sampled)
power spectral density (PSD), or power spectrum, and may
be denoted
The complete (not sampled) PSD is
, where the DTFT is defined in Appendix E (it's just an
infinitely long DFT). The DFT of
thus provides a sample-based
estimate of the PSD:
We could call
a ``sampled sample power spectral
density''.8.6
At lag zero, the autocorrelation function reduces to the average
power (mean square) which we defined in §5.5:
Replacing ``correlation'' with ``covariance'' in the above definitions
gives corresponding zero-mean versions. For example, the sample
circular cross-covariance may be defined as
where
and
denote the means of
and
,
respectively. We also have that
equals the sample
variance of the signal
:
Power Spectral Density
FIR System Identification
Correlation Analysis
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``Mathematics of the Discrete Fourier Transform (DFT)'',
by Julius O. Smith III,
W3K Publishing, 2003, ISBN 0-9745607-0-7.
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Copyright © 2003-10-09 by Julius O. Smith III
Center for Computer Research in Music and Acoustics (CCRMA),
Stanford University
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