cannam@127: cannam@127: cannam@127: cannam@127: cannam@127:
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cannam@127:• The Halfcomplex-format DFT: | cannam@127: | |
• Real even/odd DFTs (cosine/sine transforms): | cannam@127: | |
• The Discrete Hartley Transform: | cannam@127: |
FFTW supports several other transform types via a unified r2r
cannam@127: (real-to-real) interface,
cannam@127:
cannam@127: so called because it takes a real (double
) array and outputs a
cannam@127: real array of the same size. These r2r transforms currently fall into
cannam@127: three categories: DFTs of real input and complex-Hermitian output in
cannam@127: halfcomplex format, DFTs of real input with even/odd symmetry
cannam@127: (a.k.a. discrete cosine/sine transforms, DCTs/DSTs), and discrete
cannam@127: Hartley transforms (DHTs), all described in more detail by the
cannam@127: following sections.
cannam@127:
The r2r transforms follow the by now familiar interface of creating an
cannam@127: fftw_plan
, executing it with fftw_execute(plan)
, and
cannam@127: destroying it with fftw_destroy_plan(plan)
. Furthermore, all
cannam@127: r2r transforms share the same planner interface:
cannam@127:
fftw_plan fftw_plan_r2r_1d(int n, double *in, double *out, cannam@127: fftw_r2r_kind kind, unsigned flags); cannam@127: fftw_plan fftw_plan_r2r_2d(int n0, int n1, double *in, double *out, cannam@127: fftw_r2r_kind kind0, fftw_r2r_kind kind1, cannam@127: unsigned flags); cannam@127: fftw_plan fftw_plan_r2r_3d(int n0, int n1, int n2, cannam@127: double *in, double *out, cannam@127: fftw_r2r_kind kind0, cannam@127: fftw_r2r_kind kind1, cannam@127: fftw_r2r_kind kind2, cannam@127: unsigned flags); cannam@127: fftw_plan fftw_plan_r2r(int rank, const int *n, double *in, double *out, cannam@127: const fftw_r2r_kind *kind, unsigned flags); cannam@127:
Just as for the complex DFT, these plan 1d/2d/3d/multi-dimensional
cannam@127: transforms for contiguous arrays in row-major order, transforming (real)
cannam@127: input to output of the same size, where n
specifies the
cannam@127: physical dimensions of the arrays. All positive n
are
cannam@127: supported (with the exception of n=1
for the FFTW_REDFT00
cannam@127: kind, noted in the real-even subsection below); products of small
cannam@127: factors are most efficient (factorizing n-1
and n+1
for
cannam@127: FFTW_REDFT00
and FFTW_RODFT00
kinds, described below), but
cannam@127: an O(n log n) algorithm is used even for prime sizes.
cannam@127:
Each dimension has a kind parameter, of type
cannam@127: fftw_r2r_kind
, specifying the kind of r2r transform to be used
cannam@127: for that dimension.
cannam@127:
cannam@127:
cannam@127: (In the case of fftw_plan_r2r
, this is an array kind[rank]
cannam@127: where kind[i]
is the transform kind for the dimension
cannam@127: n[i]
.) The kind can be one of a set of predefined constants,
cannam@127: defined in the following subsections.
cannam@127:
In other words, FFTW computes the separable product of the specified cannam@127: r2r transforms over each dimension, which can be used e.g. for partial cannam@127: differential equations with mixed boundary conditions. (For some r2r cannam@127: kinds, notably the halfcomplex DFT and the DHT, such a separable cannam@127: product is somewhat problematic in more than one dimension, however, cannam@127: as is described below.) cannam@127:
cannam@127:In the current version of FFTW, all r2r transforms except for the cannam@127: halfcomplex type are computed via pre- or post-processing of cannam@127: halfcomplex transforms, and they are therefore not as fast as they cannam@127: could be. Since most other general DCT/DST codes employ a similar cannam@127: algorithm, however, FFTW’s implementation should provide at least cannam@127: competitive performance. cannam@127:
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