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package org.apache.commons.math3.transform;
This enumeration defines the various types of normalizations that can be
applied to discrete Fourier transforms (DFT). The exact definition of these
normalizations is detailed below.
See Also: - FastFourierTransformer
Since: 3.0
/**
* This enumeration defines the various types of normalizations that can be
* applied to discrete Fourier transforms (DFT). The exact definition of these
* normalizations is detailed below.
*
* @see FastFourierTransformer
* @since 3.0
*/
public enum DftNormalization {
Should be passed to the constructor of FastFourierTransformer
to use the standard normalization convention. This normalization
convention is defined as follows
- forward transform: yn = ∑k=0N-1
xk exp(-2πi n k / N),
- inverse transform: xk = N-1
∑n=0N-1 yn exp(2πi n k / N),
where N is the size of the data sample.
/**
* Should be passed to the constructor of {@link FastFourierTransformer}
* to use the <em>standard</em> normalization convention. This normalization
* convention is defined as follows
* <ul>
* <li>forward transform: y<sub>n</sub> = ∑<sub>k=0</sub><sup>N-1</sup>
* x<sub>k</sub> exp(-2πi n k / N),</li>
* <li>inverse transform: x<sub>k</sub> = N<sup>-1</sup>
* ∑<sub>n=0</sub><sup>N-1</sup> y<sub>n</sub> exp(2πi n k / N),</li>
* </ul>
* where N is the size of the data sample.
*/
STANDARD,
Should be passed to the constructor of FastFourierTransformer
to use the unitary normalization convention. This normalization
convention is defined as follows
- forward transform: yn = (1 / √N)
∑k=0N-1 xk
exp(-2πi n k / N),
- inverse transform: xk = (1 / √N)
∑n=0N-1 yn exp(2πi n k / N),
which makes the transform unitary. N is the size of the data sample.
/**
* Should be passed to the constructor of {@link FastFourierTransformer}
* to use the <em>unitary</em> normalization convention. This normalization
* convention is defined as follows
* <ul>
* <li>forward transform: y<sub>n</sub> = (1 / √N)
* ∑<sub>k=0</sub><sup>N-1</sup> x<sub>k</sub>
* exp(-2πi n k / N),</li>
* <li>inverse transform: x<sub>k</sub> = (1 / √N)
* ∑<sub>n=0</sub><sup>N-1</sup> y<sub>n</sub> exp(2πi n k / N),</li>
* </ul>
* which makes the transform unitary. N is the size of the data sample.
*/
UNITARY;
}