{ } Raw JSON

bundles / scipy 1.17.1 / scipy / fftpack / _realtransforms / dct

function

scipy.fftpack._realtransforms:dct

source: /scipy/fftpack/_realtransforms.py :235

Signature

def   dct ( x type = 2 n = None axis = -1 norm = None overwrite_x = False )

Summary

Return the Discrete Cosine Transform of arbitrary type sequence x.

Parameters

x : array_like

The input array.

type : {1, 2, 3, 4}, optional

Type of the DCT (see Notes). Default type is 2.

n : int, optional

Length of the transform. If n < x.shape[axis], x is truncated. If n > x.shape[axis], x is zero-padded. The default results in n = x.shape[axis].

axis : int, optional

Axis along which the dct is computed; the default is over the last axis (i.e., axis=-1).

norm : {None, 'ortho'}, optional

Normalization mode (see Notes). Default is None.

overwrite_x : bool, optional

If True, the contents of x can be destroyed; the default is False.

Returns

y : ndarray of real

The transformed input array.

Notes

For a single dimension array x, dct(x, norm='ortho') is equal to MATLAB dct(x).

There are, theoretically, 8 types of the DCT, only the first 4 types are implemented in scipy. 'The' DCT generally refers to DCT type 2, and 'the' Inverse DCT generally refers to DCT type 3.

Type I

There are several definitions of the DCT-I; we use the following (for norm=None)

If norm='ortho', x[0] and x[N-1] are multiplied by a scaling factor of , and y[k] is multiplied by a scaling factor f

Type II

There are several definitions of the DCT-II; we use the following (for norm=None)

If norm='ortho', y[k] is multiplied by a scaling factor f

which makes the corresponding matrix of coefficients orthonormal (O @ O.T = np.eye(N)).

Type III

There are several definitions, we use the following (for norm=None)

or, for norm='ortho'

The (unnormalized) DCT-III is the inverse of the (unnormalized) DCT-II, up to a factor 2N. The orthonormalized DCT-III is exactly the inverse of the orthonormalized DCT-II.

Type IV

There are several definitions of the DCT-IV; we use the following (for norm=None)

If norm='ortho', y[k] is multiplied by a scaling factor f

Examples

The Type 1 DCT is equivalent to the FFT (though faster) for real, even-symmetrical inputs. The output is also real and even-symmetrical. Half of the FFT input is used to generate half of the FFT output:
from scipy.fftpack import fft, dct
import numpy as np
fft(np.array([4., 3., 5., 10., 5., 3.])).real
dct(np.array([4., 3., 5., 10.]), 1)

See also

idct

Inverse DCT

Aliases

  • scipy.fftpack.dct