annotate src/fftw-3.3.8/doc/tutorial.texi @ 84:08ae793730bd

Add null config files
author Chris Cannam
date Mon, 02 Mar 2020 14:03:47 +0000
parents d0c2a83c1364
children
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Chris@82 1 @node Tutorial, Other Important Topics, Introduction, Top
Chris@82 2 @chapter Tutorial
Chris@82 3 @menu
Chris@82 4 * Complex One-Dimensional DFTs::
Chris@82 5 * Complex Multi-Dimensional DFTs::
Chris@82 6 * One-Dimensional DFTs of Real Data::
Chris@82 7 * Multi-Dimensional DFTs of Real Data::
Chris@82 8 * More DFTs of Real Data::
Chris@82 9 @end menu
Chris@82 10
Chris@82 11 This chapter describes the basic usage of FFTW, i.e., how to compute
Chris@82 12 @cindex basic interface
Chris@82 13 the Fourier transform of a single array. This chapter tells the
Chris@82 14 truth, but not the @emph{whole} truth. Specifically, FFTW implements
Chris@82 15 additional routines and flags that are not documented here, although
Chris@82 16 in many cases we try to indicate where added capabilities exist. For
Chris@82 17 more complete information, see @ref{FFTW Reference}. (Note that you
Chris@82 18 need to compile and install FFTW before you can use it in a program.
Chris@82 19 For the details of the installation, see @ref{Installation and
Chris@82 20 Customization}.)
Chris@82 21
Chris@82 22 We recommend that you read this tutorial in order.@footnote{You can
Chris@82 23 read the tutorial in bit-reversed order after computing your first
Chris@82 24 transform.} At the least, read the first section (@pxref{Complex
Chris@82 25 One-Dimensional DFTs}) before reading any of the others, even if your
Chris@82 26 main interest lies in one of the other transform types.
Chris@82 27
Chris@82 28 Users of FFTW version 2 and earlier may also want to read @ref{Upgrading
Chris@82 29 from FFTW version 2}.
Chris@82 30
Chris@82 31 @c ------------------------------------------------------------
Chris@82 32 @node Complex One-Dimensional DFTs, Complex Multi-Dimensional DFTs, Tutorial, Tutorial
Chris@82 33 @section Complex One-Dimensional DFTs
Chris@82 34
Chris@82 35 @quotation
Chris@82 36 Plan: To bother about the best method of accomplishing an accidental result.
Chris@82 37 [Ambrose Bierce, @cite{The Enlarged Devil's Dictionary}.]
Chris@82 38 @cindex Devil
Chris@82 39 @end quotation
Chris@82 40
Chris@82 41 @iftex
Chris@82 42 @medskip
Chris@82 43 @end iftex
Chris@82 44
Chris@82 45 The basic usage of FFTW to compute a one-dimensional DFT of size
Chris@82 46 @code{N} is simple, and it typically looks something like this code:
Chris@82 47
Chris@82 48 @example
Chris@82 49 #include <fftw3.h>
Chris@82 50 ...
Chris@82 51 @{
Chris@82 52 fftw_complex *in, *out;
Chris@82 53 fftw_plan p;
Chris@82 54 ...
Chris@82 55 in = (fftw_complex*) fftw_malloc(sizeof(fftw_complex) * N);
Chris@82 56 out = (fftw_complex*) fftw_malloc(sizeof(fftw_complex) * N);
Chris@82 57 p = fftw_plan_dft_1d(N, in, out, FFTW_FORWARD, FFTW_ESTIMATE);
Chris@82 58 ...
Chris@82 59 fftw_execute(p); /* @r{repeat as needed} */
Chris@82 60 ...
Chris@82 61 fftw_destroy_plan(p);
Chris@82 62 fftw_free(in); fftw_free(out);
Chris@82 63 @}
Chris@82 64 @end example
Chris@82 65
Chris@82 66 You must link this code with the @code{fftw3} library. On Unix systems,
Chris@82 67 link with @code{-lfftw3 -lm}.
Chris@82 68
Chris@82 69 The example code first allocates the input and output arrays. You can
Chris@82 70 allocate them in any way that you like, but we recommend using
Chris@82 71 @code{fftw_malloc}, which behaves like
Chris@82 72 @findex fftw_malloc
Chris@82 73 @code{malloc} except that it properly aligns the array when SIMD
Chris@82 74 instructions (such as SSE and Altivec) are available (@pxref{SIMD
Chris@82 75 alignment and fftw_malloc}). [Alternatively, we provide a convenient wrapper function @code{fftw_alloc_complex(N)} which has the same effect.]
Chris@82 76 @findex fftw_alloc_complex
Chris@82 77 @cindex SIMD
Chris@82 78
Chris@82 79
Chris@82 80 The data is an array of type @code{fftw_complex}, which is by default a
Chris@82 81 @code{double[2]} composed of the real (@code{in[i][0]}) and imaginary
Chris@82 82 (@code{in[i][1]}) parts of a complex number.
Chris@82 83 @tindex fftw_complex
Chris@82 84
Chris@82 85 The next step is to create a @dfn{plan}, which is an object
Chris@82 86 @cindex plan
Chris@82 87 that contains all the data that FFTW needs to compute the FFT.
Chris@82 88 This function creates the plan:
Chris@82 89
Chris@82 90 @example
Chris@82 91 fftw_plan fftw_plan_dft_1d(int n, fftw_complex *in, fftw_complex *out,
Chris@82 92 int sign, unsigned flags);
Chris@82 93 @end example
Chris@82 94 @findex fftw_plan_dft_1d
Chris@82 95 @tindex fftw_plan
Chris@82 96
Chris@82 97 The first argument, @code{n}, is the size of the transform you are
Chris@82 98 trying to compute. The size @code{n} can be any positive integer, but
Chris@82 99 sizes that are products of small factors are transformed most
Chris@82 100 efficiently (although prime sizes still use an @Onlogn{} algorithm).
Chris@82 101
Chris@82 102 The next two arguments are pointers to the input and output arrays of
Chris@82 103 the transform. These pointers can be equal, indicating an
Chris@82 104 @dfn{in-place} transform.
Chris@82 105 @cindex in-place
Chris@82 106
Chris@82 107
Chris@82 108 The fourth argument, @code{sign}, can be either @code{FFTW_FORWARD}
Chris@82 109 (@code{-1}) or @code{FFTW_BACKWARD} (@code{+1}),
Chris@82 110 @ctindex FFTW_FORWARD
Chris@82 111 @ctindex FFTW_BACKWARD
Chris@82 112 and indicates the direction of the transform you are interested in;
Chris@82 113 technically, it is the sign of the exponent in the transform.
Chris@82 114
Chris@82 115 The @code{flags} argument is usually either @code{FFTW_MEASURE} or
Chris@82 116 @cindex flags
Chris@82 117 @code{FFTW_ESTIMATE}. @code{FFTW_MEASURE} instructs FFTW to run
Chris@82 118 @ctindex FFTW_MEASURE
Chris@82 119 and measure the execution time of several FFTs in order to find the
Chris@82 120 best way to compute the transform of size @code{n}. This process takes
Chris@82 121 some time (usually a few seconds), depending on your machine and on
Chris@82 122 the size of the transform. @code{FFTW_ESTIMATE}, on the contrary,
Chris@82 123 does not run any computation and just builds a
Chris@82 124 @ctindex FFTW_ESTIMATE
Chris@82 125 reasonable plan that is probably sub-optimal. In short, if your
Chris@82 126 program performs many transforms of the same size and initialization
Chris@82 127 time is not important, use @code{FFTW_MEASURE}; otherwise use the
Chris@82 128 estimate.
Chris@82 129
Chris@82 130 @emph{You must create the plan before initializing the input}, because
Chris@82 131 @code{FFTW_MEASURE} overwrites the @code{in}/@code{out} arrays.
Chris@82 132 (Technically, @code{FFTW_ESTIMATE} does not touch your arrays, but you
Chris@82 133 should always create plans first just to be sure.)
Chris@82 134
Chris@82 135 Once the plan has been created, you can use it as many times as you
Chris@82 136 like for transforms on the specified @code{in}/@code{out} arrays,
Chris@82 137 computing the actual transforms via @code{fftw_execute(plan)}:
Chris@82 138 @example
Chris@82 139 void fftw_execute(const fftw_plan plan);
Chris@82 140 @end example
Chris@82 141 @findex fftw_execute
Chris@82 142
Chris@82 143 The DFT results are stored in-order in the array @code{out}, with the
Chris@82 144 zero-frequency (DC) component in @code{out[0]}.
Chris@82 145 @cindex frequency
Chris@82 146 If @code{in != out}, the transform is @dfn{out-of-place} and the input
Chris@82 147 array @code{in} is not modified. Otherwise, the input array is
Chris@82 148 overwritten with the transform.
Chris@82 149
Chris@82 150 @cindex execute
Chris@82 151 If you want to transform a @emph{different} array of the same size, you
Chris@82 152 can create a new plan with @code{fftw_plan_dft_1d} and FFTW
Chris@82 153 automatically reuses the information from the previous plan, if
Chris@82 154 possible. Alternatively, with the ``guru'' interface you can apply a
Chris@82 155 given plan to a different array, if you are careful.
Chris@82 156 @xref{FFTW Reference}.
Chris@82 157
Chris@82 158 When you are done with the plan, you deallocate it by calling
Chris@82 159 @code{fftw_destroy_plan(plan)}:
Chris@82 160 @example
Chris@82 161 void fftw_destroy_plan(fftw_plan plan);
Chris@82 162 @end example
Chris@82 163 @findex fftw_destroy_plan
Chris@82 164 If you allocate an array with @code{fftw_malloc()} you must deallocate
Chris@82 165 it with @code{fftw_free()}. Do not use @code{free()} or, heaven
Chris@82 166 forbid, @code{delete}.
Chris@82 167 @findex fftw_free
Chris@82 168
Chris@82 169 FFTW computes an @emph{unnormalized} DFT. Thus, computing a forward
Chris@82 170 followed by a backward transform (or vice versa) results in the original
Chris@82 171 array scaled by @code{n}. For the definition of the DFT, see @ref{What
Chris@82 172 FFTW Really Computes}.
Chris@82 173 @cindex DFT
Chris@82 174 @cindex normalization
Chris@82 175
Chris@82 176
Chris@82 177 If you have a C compiler, such as @code{gcc}, that supports the
Chris@82 178 C99 standard, and you @code{#include <complex.h>} @emph{before}
Chris@82 179 @code{<fftw3.h>}, then @code{fftw_complex} is the native
Chris@82 180 double-precision complex type and you can manipulate it with ordinary
Chris@82 181 arithmetic. Otherwise, FFTW defines its own complex type, which is
Chris@82 182 bit-compatible with the C99 complex type. @xref{Complex numbers}.
Chris@82 183 (The C++ @code{<complex>} template class may also be usable via a
Chris@82 184 typecast.)
Chris@82 185 @cindex C++
Chris@82 186
Chris@82 187 To use single or long-double precision versions of FFTW, replace the
Chris@82 188 @code{fftw_} prefix by @code{fftwf_} or @code{fftwl_} and link with
Chris@82 189 @code{-lfftw3f} or @code{-lfftw3l}, but use the @emph{same}
Chris@82 190 @code{<fftw3.h>} header file.
Chris@82 191 @cindex precision
Chris@82 192
Chris@82 193
Chris@82 194 Many more flags exist besides @code{FFTW_MEASURE} and
Chris@82 195 @code{FFTW_ESTIMATE}. For example, use @code{FFTW_PATIENT} if you're
Chris@82 196 willing to wait even longer for a possibly even faster plan (@pxref{FFTW
Chris@82 197 Reference}).
Chris@82 198 @ctindex FFTW_PATIENT
Chris@82 199 You can also save plans for future use, as described by @ref{Words of
Chris@82 200 Wisdom-Saving Plans}.
Chris@82 201
Chris@82 202 @c ------------------------------------------------------------
Chris@82 203 @node Complex Multi-Dimensional DFTs, One-Dimensional DFTs of Real Data, Complex One-Dimensional DFTs, Tutorial
Chris@82 204 @section Complex Multi-Dimensional DFTs
Chris@82 205
Chris@82 206 Multi-dimensional transforms work much the same way as one-dimensional
Chris@82 207 transforms: you allocate arrays of @code{fftw_complex} (preferably
Chris@82 208 using @code{fftw_malloc}), create an @code{fftw_plan}, execute it as
Chris@82 209 many times as you want with @code{fftw_execute(plan)}, and clean up
Chris@82 210 with @code{fftw_destroy_plan(plan)} (and @code{fftw_free}).
Chris@82 211
Chris@82 212 FFTW provides two routines for creating plans for 2d and 3d transforms,
Chris@82 213 and one routine for creating plans of arbitrary dimensionality.
Chris@82 214 The 2d and 3d routines have the following signature:
Chris@82 215 @example
Chris@82 216 fftw_plan fftw_plan_dft_2d(int n0, int n1,
Chris@82 217 fftw_complex *in, fftw_complex *out,
Chris@82 218 int sign, unsigned flags);
Chris@82 219 fftw_plan fftw_plan_dft_3d(int n0, int n1, int n2,
Chris@82 220 fftw_complex *in, fftw_complex *out,
Chris@82 221 int sign, unsigned flags);
Chris@82 222 @end example
Chris@82 223 @findex fftw_plan_dft_2d
Chris@82 224 @findex fftw_plan_dft_3d
Chris@82 225
Chris@82 226 These routines create plans for @code{n0} by @code{n1} two-dimensional
Chris@82 227 (2d) transforms and @code{n0} by @code{n1} by @code{n2} 3d transforms,
Chris@82 228 respectively. All of these transforms operate on contiguous arrays in
Chris@82 229 the C-standard @dfn{row-major} order, so that the last dimension has the
Chris@82 230 fastest-varying index in the array. This layout is described further in
Chris@82 231 @ref{Multi-dimensional Array Format}.
Chris@82 232
Chris@82 233 FFTW can also compute transforms of higher dimensionality. In order to
Chris@82 234 avoid confusion between the various meanings of the the word
Chris@82 235 ``dimension'', we use the term @emph{rank}
Chris@82 236 @cindex rank
Chris@82 237 to denote the number of independent indices in an array.@footnote{The
Chris@82 238 term ``rank'' is commonly used in the APL, FORTRAN, and Common Lisp
Chris@82 239 traditions, although it is not so common in the C@tie{}world.} For
Chris@82 240 example, we say that a 2d transform has rank@tie{}2, a 3d transform has
Chris@82 241 rank@tie{}3, and so on. You can plan transforms of arbitrary rank by
Chris@82 242 means of the following function:
Chris@82 243
Chris@82 244 @example
Chris@82 245 fftw_plan fftw_plan_dft(int rank, const int *n,
Chris@82 246 fftw_complex *in, fftw_complex *out,
Chris@82 247 int sign, unsigned flags);
Chris@82 248 @end example
Chris@82 249 @findex fftw_plan_dft
Chris@82 250
Chris@82 251 Here, @code{n} is a pointer to an array @code{n[rank]} denoting an
Chris@82 252 @code{n[0]} by @code{n[1]} by @dots{} by @code{n[rank-1]} transform.
Chris@82 253 Thus, for example, the call
Chris@82 254 @example
Chris@82 255 fftw_plan_dft_2d(n0, n1, in, out, sign, flags);
Chris@82 256 @end example
Chris@82 257 is equivalent to the following code fragment:
Chris@82 258 @example
Chris@82 259 int n[2];
Chris@82 260 n[0] = n0;
Chris@82 261 n[1] = n1;
Chris@82 262 fftw_plan_dft(2, n, in, out, sign, flags);
Chris@82 263 @end example
Chris@82 264 @code{fftw_plan_dft} is not restricted to 2d and 3d transforms,
Chris@82 265 however, but it can plan transforms of arbitrary rank.
Chris@82 266
Chris@82 267 You may have noticed that all the planner routines described so far
Chris@82 268 have overlapping functionality. For example, you can plan a 1d or 2d
Chris@82 269 transform by using @code{fftw_plan_dft} with a @code{rank} of @code{1}
Chris@82 270 or @code{2}, or even by calling @code{fftw_plan_dft_3d} with @code{n0}
Chris@82 271 and/or @code{n1} equal to @code{1} (with no loss in efficiency). This
Chris@82 272 pattern continues, and FFTW's planning routines in general form a
Chris@82 273 ``partial order,'' sequences of
Chris@82 274 @cindex partial order
Chris@82 275 interfaces with strictly increasing generality but correspondingly
Chris@82 276 greater complexity.
Chris@82 277
Chris@82 278 @code{fftw_plan_dft} is the most general complex-DFT routine that we
Chris@82 279 describe in this tutorial, but there are also the advanced and guru interfaces,
Chris@82 280 @cindex advanced interface
Chris@82 281 @cindex guru interface
Chris@82 282 which allow one to efficiently combine multiple/strided transforms
Chris@82 283 into a single FFTW plan, transform a subset of a larger
Chris@82 284 multi-dimensional array, and/or to handle more general complex-number
Chris@82 285 formats. For more information, see @ref{FFTW Reference}.
Chris@82 286
Chris@82 287 @c ------------------------------------------------------------
Chris@82 288 @node One-Dimensional DFTs of Real Data, Multi-Dimensional DFTs of Real Data, Complex Multi-Dimensional DFTs, Tutorial
Chris@82 289 @section One-Dimensional DFTs of Real Data
Chris@82 290
Chris@82 291 In many practical applications, the input data @code{in[i]} are purely
Chris@82 292 real numbers, in which case the DFT output satisfies the ``Hermitian''
Chris@82 293 @cindex Hermitian
Chris@82 294 redundancy: @code{out[i]} is the conjugate of @code{out[n-i]}. It is
Chris@82 295 possible to take advantage of these circumstances in order to achieve
Chris@82 296 roughly a factor of two improvement in both speed and memory usage.
Chris@82 297
Chris@82 298 In exchange for these speed and space advantages, the user sacrifices
Chris@82 299 some of the simplicity of FFTW's complex transforms. First of all, the
Chris@82 300 input and output arrays are of @emph{different sizes and types}: the
Chris@82 301 input is @code{n} real numbers, while the output is @code{n/2+1}
Chris@82 302 complex numbers (the non-redundant outputs); this also requires slight
Chris@82 303 ``padding'' of the input array for
Chris@82 304 @cindex padding
Chris@82 305 in-place transforms. Second, the inverse transform (complex to real)
Chris@82 306 has the side-effect of @emph{overwriting its input array}, by default.
Chris@82 307 Neither of these inconveniences should pose a serious problem for
Chris@82 308 users, but it is important to be aware of them.
Chris@82 309
Chris@82 310 The routines to perform real-data transforms are almost the same as
Chris@82 311 those for complex transforms: you allocate arrays of @code{double}
Chris@82 312 and/or @code{fftw_complex} (preferably using @code{fftw_malloc} or
Chris@82 313 @code{fftw_alloc_complex}), create an @code{fftw_plan}, execute it as
Chris@82 314 many times as you want with @code{fftw_execute(plan)}, and clean up
Chris@82 315 with @code{fftw_destroy_plan(plan)} (and @code{fftw_free}). The only
Chris@82 316 differences are that the input (or output) is of type @code{double}
Chris@82 317 and there are new routines to create the plan. In one dimension:
Chris@82 318
Chris@82 319 @example
Chris@82 320 fftw_plan fftw_plan_dft_r2c_1d(int n, double *in, fftw_complex *out,
Chris@82 321 unsigned flags);
Chris@82 322 fftw_plan fftw_plan_dft_c2r_1d(int n, fftw_complex *in, double *out,
Chris@82 323 unsigned flags);
Chris@82 324 @end example
Chris@82 325 @findex fftw_plan_dft_r2c_1d
Chris@82 326 @findex fftw_plan_dft_c2r_1d
Chris@82 327
Chris@82 328 for the real input to complex-Hermitian output (@dfn{r2c}) and
Chris@82 329 complex-Hermitian input to real output (@dfn{c2r}) transforms.
Chris@82 330 @cindex r2c
Chris@82 331 @cindex c2r
Chris@82 332 Unlike the complex DFT planner, there is no @code{sign} argument.
Chris@82 333 Instead, r2c DFTs are always @code{FFTW_FORWARD} and c2r DFTs are
Chris@82 334 always @code{FFTW_BACKWARD}.
Chris@82 335 @ctindex FFTW_FORWARD
Chris@82 336 @ctindex FFTW_BACKWARD
Chris@82 337 (For single/long-double precision
Chris@82 338 @code{fftwf} and @code{fftwl}, @code{double} should be replaced by
Chris@82 339 @code{float} and @code{long double}, respectively.)
Chris@82 340 @cindex precision
Chris@82 341
Chris@82 342
Chris@82 343 Here, @code{n} is the ``logical'' size of the DFT, not necessarily the
Chris@82 344 physical size of the array. In particular, the real (@code{double})
Chris@82 345 array has @code{n} elements, while the complex (@code{fftw_complex})
Chris@82 346 array has @code{n/2+1} elements (where the division is rounded down).
Chris@82 347 For an in-place transform,
Chris@82 348 @cindex in-place
Chris@82 349 @code{in} and @code{out} are aliased to the same array, which must be
Chris@82 350 big enough to hold both; so, the real array would actually have
Chris@82 351 @code{2*(n/2+1)} elements, where the elements beyond the first
Chris@82 352 @code{n} are unused padding. (Note that this is very different from
Chris@82 353 the concept of ``zero-padding'' a transform to a larger length, which
Chris@82 354 changes the logical size of the DFT by actually adding new input
Chris@82 355 data.) The @math{k}th element of the complex array is exactly the
Chris@82 356 same as the @math{k}th element of the corresponding complex DFT. All
Chris@82 357 positive @code{n} are supported; products of small factors are most
Chris@82 358 efficient, but an @Onlogn algorithm is used even for prime sizes.
Chris@82 359
Chris@82 360 As noted above, the c2r transform destroys its input array even for
Chris@82 361 out-of-place transforms. This can be prevented, if necessary, by
Chris@82 362 including @code{FFTW_PRESERVE_INPUT} in the @code{flags}, with
Chris@82 363 unfortunately some sacrifice in performance.
Chris@82 364 @cindex flags
Chris@82 365 @ctindex FFTW_PRESERVE_INPUT
Chris@82 366 This flag is also not currently supported for multi-dimensional real
Chris@82 367 DFTs (next section).
Chris@82 368
Chris@82 369 Readers familiar with DFTs of real data will recall that the 0th (the
Chris@82 370 ``DC'') and @code{n/2}-th (the ``Nyquist'' frequency, when @code{n} is
Chris@82 371 even) elements of the complex output are purely real. Some
Chris@82 372 implementations therefore store the Nyquist element where the DC
Chris@82 373 imaginary part would go, in order to make the input and output arrays
Chris@82 374 the same size. Such packing, however, does not generalize well to
Chris@82 375 multi-dimensional transforms, and the space savings are miniscule in
Chris@82 376 any case; FFTW does not support it.
Chris@82 377
Chris@82 378 An alternative interface for one-dimensional r2c and c2r DFTs can be
Chris@82 379 found in the @samp{r2r} interface (@pxref{The Halfcomplex-format
Chris@82 380 DFT}), with ``halfcomplex''-format output that @emph{is} the same size
Chris@82 381 (and type) as the input array.
Chris@82 382 @cindex halfcomplex format
Chris@82 383 That interface, although it is not very useful for multi-dimensional
Chris@82 384 transforms, may sometimes yield better performance.
Chris@82 385
Chris@82 386 @c ------------------------------------------------------------
Chris@82 387 @node Multi-Dimensional DFTs of Real Data, More DFTs of Real Data, One-Dimensional DFTs of Real Data, Tutorial
Chris@82 388 @section Multi-Dimensional DFTs of Real Data
Chris@82 389
Chris@82 390 Multi-dimensional DFTs of real data use the following planner routines:
Chris@82 391
Chris@82 392 @example
Chris@82 393 fftw_plan fftw_plan_dft_r2c_2d(int n0, int n1,
Chris@82 394 double *in, fftw_complex *out,
Chris@82 395 unsigned flags);
Chris@82 396 fftw_plan fftw_plan_dft_r2c_3d(int n0, int n1, int n2,
Chris@82 397 double *in, fftw_complex *out,
Chris@82 398 unsigned flags);
Chris@82 399 fftw_plan fftw_plan_dft_r2c(int rank, const int *n,
Chris@82 400 double *in, fftw_complex *out,
Chris@82 401 unsigned flags);
Chris@82 402 @end example
Chris@82 403 @findex fftw_plan_dft_r2c_2d
Chris@82 404 @findex fftw_plan_dft_r2c_3d
Chris@82 405 @findex fftw_plan_dft_r2c
Chris@82 406
Chris@82 407 as well as the corresponding @code{c2r} routines with the input/output
Chris@82 408 types swapped. These routines work similarly to their complex
Chris@82 409 analogues, except for the fact that here the complex output array is cut
Chris@82 410 roughly in half and the real array requires padding for in-place
Chris@82 411 transforms (as in 1d, above).
Chris@82 412
Chris@82 413 As before, @code{n} is the logical size of the array, and the
Chris@82 414 consequences of this on the the format of the complex arrays deserve
Chris@82 415 careful attention.
Chris@82 416 @cindex r2c/c2r multi-dimensional array format
Chris@82 417 Suppose that the real data has dimensions @ndims (in row-major order).
Chris@82 418 Then, after an r2c transform, the output is an @ndimshalf array of
Chris@82 419 @code{fftw_complex} values in row-major order, corresponding to slightly
Chris@82 420 over half of the output of the corresponding complex DFT. (The division
Chris@82 421 is rounded down.) The ordering of the data is otherwise exactly the
Chris@82 422 same as in the complex-DFT case.
Chris@82 423
Chris@82 424 For out-of-place transforms, this is the end of the story: the real
Chris@82 425 data is stored as a row-major array of size @ndims and the complex
Chris@82 426 data is stored as a row-major array of size @ndimshalf{}.
Chris@82 427
Chris@82 428 For in-place transforms, however, extra padding of the real-data array
Chris@82 429 is necessary because the complex array is larger than the real array,
Chris@82 430 and the two arrays share the same memory locations. Thus, for
Chris@82 431 in-place transforms, the final dimension of the real-data array must
Chris@82 432 be padded with extra values to accommodate the size of the complex
Chris@82 433 data---two values if the last dimension is even and one if it is odd.
Chris@82 434 @cindex padding
Chris@82 435 That is, the last dimension of the real data must physically contain
Chris@82 436 @tex
Chris@82 437 $2 (n_{d-1}/2+1)$
Chris@82 438 @end tex
Chris@82 439 @ifinfo
Chris@82 440 2 * (n[d-1]/2+1)
Chris@82 441 @end ifinfo
Chris@82 442 @html
Chris@82 443 2 * (n<sub>d-1</sub>/2+1)
Chris@82 444 @end html
Chris@82 445 @code{double} values (exactly enough to hold the complex data).
Chris@82 446 This physical array size does not, however, change the @emph{logical}
Chris@82 447 array size---only
Chris@82 448 @tex
Chris@82 449 $n_{d-1}$
Chris@82 450 @end tex
Chris@82 451 @ifinfo
Chris@82 452 n[d-1]
Chris@82 453 @end ifinfo
Chris@82 454 @html
Chris@82 455 n<sub>d-1</sub>
Chris@82 456 @end html
Chris@82 457 values are actually stored in the last dimension, and
Chris@82 458 @tex
Chris@82 459 $n_{d-1}$
Chris@82 460 @end tex
Chris@82 461 @ifinfo
Chris@82 462 n[d-1]
Chris@82 463 @end ifinfo
Chris@82 464 @html
Chris@82 465 n<sub>d-1</sub>
Chris@82 466 @end html
Chris@82 467 is the last dimension passed to the plan-creation routine.
Chris@82 468
Chris@82 469 For example, consider the transform of a two-dimensional real array of
Chris@82 470 size @code{n0} by @code{n1}. The output of the r2c transform is a
Chris@82 471 two-dimensional complex array of size @code{n0} by @code{n1/2+1}, where
Chris@82 472 the @code{y} dimension has been cut nearly in half because of
Chris@82 473 redundancies in the output. Because @code{fftw_complex} is twice the
Chris@82 474 size of @code{double}, the output array is slightly bigger than the
Chris@82 475 input array. Thus, if we want to compute the transform in place, we
Chris@82 476 must @emph{pad} the input array so that it is of size @code{n0} by
Chris@82 477 @code{2*(n1/2+1)}. If @code{n1} is even, then there are two padding
Chris@82 478 elements at the end of each row (which need not be initialized, as they
Chris@82 479 are only used for output).
Chris@82 480
Chris@82 481 @ifhtml
Chris@82 482 The following illustration depicts the input and output arrays just
Chris@82 483 described, for both the out-of-place and in-place transforms (with the
Chris@82 484 arrows indicating consecutive memory locations):
Chris@82 485 @image{rfftwnd-for-html}
Chris@82 486 @end ifhtml
Chris@82 487 @ifnotinfo
Chris@82 488 @ifnothtml
Chris@82 489 @float Figure,fig:rfftwnd
Chris@82 490 @center @image{rfftwnd}
Chris@82 491 @caption{Illustration of the data layout for a 2d @code{nx} by @code{ny}
Chris@82 492 real-to-complex transform.}
Chris@82 493 @end float
Chris@82 494 @ref{fig:rfftwnd} depicts the input and output arrays just
Chris@82 495 described, for both the out-of-place and in-place transforms (with the
Chris@82 496 arrows indicating consecutive memory locations):
Chris@82 497 @end ifnothtml
Chris@82 498 @end ifnotinfo
Chris@82 499
Chris@82 500 These transforms are unnormalized, so an r2c followed by a c2r
Chris@82 501 transform (or vice versa) will result in the original data scaled by
Chris@82 502 the number of real data elements---that is, the product of the
Chris@82 503 (logical) dimensions of the real data.
Chris@82 504 @cindex normalization
Chris@82 505
Chris@82 506
Chris@82 507 (Because the last dimension is treated specially, if it is equal to
Chris@82 508 @code{1} the transform is @emph{not} equivalent to a lower-dimensional
Chris@82 509 r2c/c2r transform. In that case, the last complex dimension also has
Chris@82 510 size @code{1} (@code{=1/2+1}), and no advantage is gained over the
Chris@82 511 complex transforms.)
Chris@82 512
Chris@82 513 @c ------------------------------------------------------------
Chris@82 514 @node More DFTs of Real Data, , Multi-Dimensional DFTs of Real Data, Tutorial
Chris@82 515 @section More DFTs of Real Data
Chris@82 516 @menu
Chris@82 517 * The Halfcomplex-format DFT::
Chris@82 518 * Real even/odd DFTs (cosine/sine transforms)::
Chris@82 519 * The Discrete Hartley Transform::
Chris@82 520 @end menu
Chris@82 521
Chris@82 522 FFTW supports several other transform types via a unified @dfn{r2r}
Chris@82 523 (real-to-real) interface,
Chris@82 524 @cindex r2r
Chris@82 525 so called because it takes a real (@code{double}) array and outputs a
Chris@82 526 real array of the same size. These r2r transforms currently fall into
Chris@82 527 three categories: DFTs of real input and complex-Hermitian output in
Chris@82 528 halfcomplex format, DFTs of real input with even/odd symmetry
Chris@82 529 (a.k.a. discrete cosine/sine transforms, DCTs/DSTs), and discrete
Chris@82 530 Hartley transforms (DHTs), all described in more detail by the
Chris@82 531 following sections.
Chris@82 532
Chris@82 533 The r2r transforms follow the by now familiar interface of creating an
Chris@82 534 @code{fftw_plan}, executing it with @code{fftw_execute(plan)}, and
Chris@82 535 destroying it with @code{fftw_destroy_plan(plan)}. Furthermore, all
Chris@82 536 r2r transforms share the same planner interface:
Chris@82 537
Chris@82 538 @example
Chris@82 539 fftw_plan fftw_plan_r2r_1d(int n, double *in, double *out,
Chris@82 540 fftw_r2r_kind kind, unsigned flags);
Chris@82 541 fftw_plan fftw_plan_r2r_2d(int n0, int n1, double *in, double *out,
Chris@82 542 fftw_r2r_kind kind0, fftw_r2r_kind kind1,
Chris@82 543 unsigned flags);
Chris@82 544 fftw_plan fftw_plan_r2r_3d(int n0, int n1, int n2,
Chris@82 545 double *in, double *out,
Chris@82 546 fftw_r2r_kind kind0,
Chris@82 547 fftw_r2r_kind kind1,
Chris@82 548 fftw_r2r_kind kind2,
Chris@82 549 unsigned flags);
Chris@82 550 fftw_plan fftw_plan_r2r(int rank, const int *n, double *in, double *out,
Chris@82 551 const fftw_r2r_kind *kind, unsigned flags);
Chris@82 552 @end example
Chris@82 553 @findex fftw_plan_r2r_1d
Chris@82 554 @findex fftw_plan_r2r_2d
Chris@82 555 @findex fftw_plan_r2r_3d
Chris@82 556 @findex fftw_plan_r2r
Chris@82 557
Chris@82 558 Just as for the complex DFT, these plan 1d/2d/3d/multi-dimensional
Chris@82 559 transforms for contiguous arrays in row-major order, transforming (real)
Chris@82 560 input to output of the same size, where @code{n} specifies the
Chris@82 561 @emph{physical} dimensions of the arrays. All positive @code{n} are
Chris@82 562 supported (with the exception of @code{n=1} for the @code{FFTW_REDFT00}
Chris@82 563 kind, noted in the real-even subsection below); products of small
Chris@82 564 factors are most efficient (factorizing @code{n-1} and @code{n+1} for
Chris@82 565 @code{FFTW_REDFT00} and @code{FFTW_RODFT00} kinds, described below), but
Chris@82 566 an @Onlogn algorithm is used even for prime sizes.
Chris@82 567
Chris@82 568 Each dimension has a @dfn{kind} parameter, of type
Chris@82 569 @code{fftw_r2r_kind}, specifying the kind of r2r transform to be used
Chris@82 570 for that dimension.
Chris@82 571 @cindex kind (r2r)
Chris@82 572 @tindex fftw_r2r_kind
Chris@82 573 (In the case of @code{fftw_plan_r2r}, this is an array @code{kind[rank]}
Chris@82 574 where @code{kind[i]} is the transform kind for the dimension
Chris@82 575 @code{n[i]}.) The kind can be one of a set of predefined constants,
Chris@82 576 defined in the following subsections.
Chris@82 577
Chris@82 578 In other words, FFTW computes the separable product of the specified
Chris@82 579 r2r transforms over each dimension, which can be used e.g. for partial
Chris@82 580 differential equations with mixed boundary conditions. (For some r2r
Chris@82 581 kinds, notably the halfcomplex DFT and the DHT, such a separable
Chris@82 582 product is somewhat problematic in more than one dimension, however,
Chris@82 583 as is described below.)
Chris@82 584
Chris@82 585 In the current version of FFTW, all r2r transforms except for the
Chris@82 586 halfcomplex type are computed via pre- or post-processing of
Chris@82 587 halfcomplex transforms, and they are therefore not as fast as they
Chris@82 588 could be. Since most other general DCT/DST codes employ a similar
Chris@82 589 algorithm, however, FFTW's implementation should provide at least
Chris@82 590 competitive performance.
Chris@82 591
Chris@82 592 @c =========>
Chris@82 593 @node The Halfcomplex-format DFT, Real even/odd DFTs (cosine/sine transforms), More DFTs of Real Data, More DFTs of Real Data
Chris@82 594 @subsection The Halfcomplex-format DFT
Chris@82 595
Chris@82 596 An r2r kind of @code{FFTW_R2HC} (@dfn{r2hc}) corresponds to an r2c DFT
Chris@82 597 @ctindex FFTW_R2HC
Chris@82 598 @cindex r2c
Chris@82 599 @cindex r2hc
Chris@82 600 (@pxref{One-Dimensional DFTs of Real Data}) but with ``halfcomplex''
Chris@82 601 format output, and may sometimes be faster and/or more convenient than
Chris@82 602 the latter.
Chris@82 603 @cindex halfcomplex format
Chris@82 604 The inverse @dfn{hc2r} transform is of kind @code{FFTW_HC2R}.
Chris@82 605 @ctindex FFTW_HC2R
Chris@82 606 @cindex hc2r
Chris@82 607 This consists of the non-redundant half of the complex output for a 1d
Chris@82 608 real-input DFT of size @code{n}, stored as a sequence of @code{n} real
Chris@82 609 numbers (@code{double}) in the format:
Chris@82 610
Chris@82 611 @tex
Chris@82 612 $$
Chris@82 613 r_0, r_1, r_2, \ldots, r_{n/2}, i_{(n+1)/2-1}, \ldots, i_2, i_1
Chris@82 614 $$
Chris@82 615 @end tex
Chris@82 616 @ifinfo
Chris@82 617 r0, r1, r2, r(n/2), i((n+1)/2-1), ..., i2, i1
Chris@82 618 @end ifinfo
Chris@82 619 @html
Chris@82 620 <p align=center>
Chris@82 621 r<sub>0</sub>, r<sub>1</sub>, r<sub>2</sub>, ..., r<sub>n/2</sub>, i<sub>(n+1)/2-1</sub>, ..., i<sub>2</sub>, i<sub>1</sub>
Chris@82 622 </p>
Chris@82 623 @end html
Chris@82 624
Chris@82 625 Here,
Chris@82 626 @ifinfo
Chris@82 627 rk
Chris@82 628 @end ifinfo
Chris@82 629 @tex
Chris@82 630 $r_k$
Chris@82 631 @end tex
Chris@82 632 @html
Chris@82 633 r<sub>k</sub>
Chris@82 634 @end html
Chris@82 635 is the real part of the @math{k}th output, and
Chris@82 636 @ifinfo
Chris@82 637 ik
Chris@82 638 @end ifinfo
Chris@82 639 @tex
Chris@82 640 $i_k$
Chris@82 641 @end tex
Chris@82 642 @html
Chris@82 643 i<sub>k</sub>
Chris@82 644 @end html
Chris@82 645 is the imaginary part. (Division by 2 is rounded down.) For a
Chris@82 646 halfcomplex array @code{hc[n]}, the @math{k}th component thus has its
Chris@82 647 real part in @code{hc[k]} and its imaginary part in @code{hc[n-k]}, with
Chris@82 648 the exception of @code{k} @code{==} @code{0} or @code{n/2} (the latter
Chris@82 649 only if @code{n} is even)---in these two cases, the imaginary part is
Chris@82 650 zero due to symmetries of the real-input DFT, and is not stored.
Chris@82 651 Thus, the r2hc transform of @code{n} real values is a halfcomplex array of
Chris@82 652 length @code{n}, and vice versa for hc2r.
Chris@82 653 @cindex normalization
Chris@82 654
Chris@82 655
Chris@82 656 Aside from the differing format, the output of
Chris@82 657 @code{FFTW_R2HC}/@code{FFTW_HC2R} is otherwise exactly the same as for
Chris@82 658 the corresponding 1d r2c/c2r transform
Chris@82 659 (i.e. @code{FFTW_FORWARD}/@code{FFTW_BACKWARD} transforms, respectively).
Chris@82 660 Recall that these transforms are unnormalized, so r2hc followed by hc2r
Chris@82 661 will result in the original data multiplied by @code{n}. Furthermore,
Chris@82 662 like the c2r transform, an out-of-place hc2r transform will
Chris@82 663 @emph{destroy its input} array.
Chris@82 664
Chris@82 665 Although these halfcomplex transforms can be used with the
Chris@82 666 multi-dimensional r2r interface, the interpretation of such a separable
Chris@82 667 product of transforms along each dimension is problematic. For example,
Chris@82 668 consider a two-dimensional @code{n0} by @code{n1}, r2hc by r2hc
Chris@82 669 transform planned by @code{fftw_plan_r2r_2d(n0, n1, in, out, FFTW_R2HC,
Chris@82 670 FFTW_R2HC, FFTW_MEASURE)}. Conceptually, FFTW first transforms the rows
Chris@82 671 (of size @code{n1}) to produce halfcomplex rows, and then transforms the
Chris@82 672 columns (of size @code{n0}). Half of these column transforms, however,
Chris@82 673 are of imaginary parts, and should therefore be multiplied by @math{i}
Chris@82 674 and combined with the r2hc transforms of the real columns to produce the
Chris@82 675 2d DFT amplitudes; FFTW's r2r transform does @emph{not} perform this
Chris@82 676 combination for you. Thus, if a multi-dimensional real-input/output DFT
Chris@82 677 is required, we recommend using the ordinary r2c/c2r
Chris@82 678 interface (@pxref{Multi-Dimensional DFTs of Real Data}).
Chris@82 679
Chris@82 680 @c =========>
Chris@82 681 @node Real even/odd DFTs (cosine/sine transforms), The Discrete Hartley Transform, The Halfcomplex-format DFT, More DFTs of Real Data
Chris@82 682 @subsection Real even/odd DFTs (cosine/sine transforms)
Chris@82 683
Chris@82 684 The Fourier transform of a real-even function @math{f(-x) = f(x)} is
Chris@82 685 real-even, and @math{i} times the Fourier transform of a real-odd
Chris@82 686 function @math{f(-x) = -f(x)} is real-odd. Similar results hold for a
Chris@82 687 discrete Fourier transform, and thus for these symmetries the need for
Chris@82 688 complex inputs/outputs is entirely eliminated. Moreover, one gains a
Chris@82 689 factor of two in speed/space from the fact that the data are real, and
Chris@82 690 an additional factor of two from the even/odd symmetry: only the
Chris@82 691 non-redundant (first) half of the array need be stored. The result is
Chris@82 692 the real-even DFT (@dfn{REDFT}) and the real-odd DFT (@dfn{RODFT}), also
Chris@82 693 known as the discrete cosine and sine transforms (@dfn{DCT} and
Chris@82 694 @dfn{DST}), respectively.
Chris@82 695 @cindex real-even DFT
Chris@82 696 @cindex REDFT
Chris@82 697 @cindex real-odd DFT
Chris@82 698 @cindex RODFT
Chris@82 699 @cindex discrete cosine transform
Chris@82 700 @cindex DCT
Chris@82 701 @cindex discrete sine transform
Chris@82 702 @cindex DST
Chris@82 703
Chris@82 704
Chris@82 705 (In this section, we describe the 1d transforms; multi-dimensional
Chris@82 706 transforms are just a separable product of these transforms operating
Chris@82 707 along each dimension.)
Chris@82 708
Chris@82 709 Because of the discrete sampling, one has an additional choice: is the
Chris@82 710 data even/odd around a sampling point, or around the point halfway
Chris@82 711 between two samples? The latter corresponds to @emph{shifting} the
Chris@82 712 samples by @emph{half} an interval, and gives rise to several transform
Chris@82 713 variants denoted by REDFT@math{ab} and RODFT@math{ab}: @math{a} and
Chris@82 714 @math{b} are @math{0} or @math{1}, and indicate whether the input
Chris@82 715 (@math{a}) and/or output (@math{b}) are shifted by half a sample
Chris@82 716 (@math{1} means it is shifted). These are also known as types I-IV of
Chris@82 717 the DCT and DST, and all four types are supported by FFTW's r2r
Chris@82 718 interface.@footnote{There are also type V-VIII transforms, which
Chris@82 719 correspond to a logical DFT of @emph{odd} size @math{N}, independent of
Chris@82 720 whether the physical size @code{n} is odd, but we do not support these
Chris@82 721 variants.}
Chris@82 722
Chris@82 723 The r2r kinds for the various REDFT and RODFT types supported by FFTW,
Chris@82 724 along with the boundary conditions at both ends of the @emph{input}
Chris@82 725 array (@code{n} real numbers @code{in[j=0..n-1]}), are:
Chris@82 726
Chris@82 727 @itemize @bullet
Chris@82 728
Chris@82 729 @item
Chris@82 730 @code{FFTW_REDFT00} (DCT-I): even around @math{j=0} and even around @math{j=n-1}.
Chris@82 731 @ctindex FFTW_REDFT00
Chris@82 732
Chris@82 733 @item
Chris@82 734 @code{FFTW_REDFT10} (DCT-II, ``the'' DCT): even around @math{j=-0.5} and even around @math{j=n-0.5}.
Chris@82 735 @ctindex FFTW_REDFT10
Chris@82 736
Chris@82 737 @item
Chris@82 738 @code{FFTW_REDFT01} (DCT-III, ``the'' IDCT): even around @math{j=0} and odd around @math{j=n}.
Chris@82 739 @ctindex FFTW_REDFT01
Chris@82 740 @cindex IDCT
Chris@82 741
Chris@82 742 @item
Chris@82 743 @code{FFTW_REDFT11} (DCT-IV): even around @math{j=-0.5} and odd around @math{j=n-0.5}.
Chris@82 744 @ctindex FFTW_REDFT11
Chris@82 745
Chris@82 746 @item
Chris@82 747 @code{FFTW_RODFT00} (DST-I): odd around @math{j=-1} and odd around @math{j=n}.
Chris@82 748 @ctindex FFTW_RODFT00
Chris@82 749
Chris@82 750 @item
Chris@82 751 @code{FFTW_RODFT10} (DST-II): odd around @math{j=-0.5} and odd around @math{j=n-0.5}.
Chris@82 752 @ctindex FFTW_RODFT10
Chris@82 753
Chris@82 754 @item
Chris@82 755 @code{FFTW_RODFT01} (DST-III): odd around @math{j=-1} and even around @math{j=n-1}.
Chris@82 756 @ctindex FFTW_RODFT01
Chris@82 757
Chris@82 758 @item
Chris@82 759 @code{FFTW_RODFT11} (DST-IV): odd around @math{j=-0.5} and even around @math{j=n-0.5}.
Chris@82 760 @ctindex FFTW_RODFT11
Chris@82 761
Chris@82 762 @end itemize
Chris@82 763
Chris@82 764 Note that these symmetries apply to the ``logical'' array being
Chris@82 765 transformed; @strong{there are no constraints on your physical input
Chris@82 766 data}. So, for example, if you specify a size-5 REDFT00 (DCT-I) of the
Chris@82 767 data @math{abcde}, it corresponds to the DFT of the logical even array
Chris@82 768 @math{abcdedcb} of size 8. A size-4 REDFT10 (DCT-II) of the data
Chris@82 769 @math{abcd} corresponds to the size-8 logical DFT of the even array
Chris@82 770 @math{abcddcba}, shifted by half a sample.
Chris@82 771
Chris@82 772 All of these transforms are invertible. The inverse of R*DFT00 is
Chris@82 773 R*DFT00; of R*DFT10 is R*DFT01 and vice versa (these are often called
Chris@82 774 simply ``the'' DCT and IDCT, respectively); and of R*DFT11 is R*DFT11.
Chris@82 775 However, the transforms computed by FFTW are unnormalized, exactly
Chris@82 776 like the corresponding real and complex DFTs, so computing a transform
Chris@82 777 followed by its inverse yields the original array scaled by @math{N},
Chris@82 778 where @math{N} is the @emph{logical} DFT size. For REDFT00,
Chris@82 779 @math{N=2(n-1)}; for RODFT00, @math{N=2(n+1)}; otherwise, @math{N=2n}.
Chris@82 780 @cindex normalization
Chris@82 781 @cindex IDCT
Chris@82 782
Chris@82 783
Chris@82 784 Note that the boundary conditions of the transform output array are
Chris@82 785 given by the input boundary conditions of the inverse transform.
Chris@82 786 Thus, the above transforms are all inequivalent in terms of
Chris@82 787 input/output boundary conditions, even neglecting the 0.5 shift
Chris@82 788 difference.
Chris@82 789
Chris@82 790 FFTW is most efficient when @math{N} is a product of small factors; note
Chris@82 791 that this @emph{differs} from the factorization of the physical size
Chris@82 792 @code{n} for REDFT00 and RODFT00! There is another oddity: @code{n=1}
Chris@82 793 REDFT00 transforms correspond to @math{N=0}, and so are @emph{not
Chris@82 794 defined} (the planner will return @code{NULL}). Otherwise, any positive
Chris@82 795 @code{n} is supported.
Chris@82 796
Chris@82 797 For the precise mathematical definitions of these transforms as used by
Chris@82 798 FFTW, see @ref{What FFTW Really Computes}. (For people accustomed to
Chris@82 799 the DCT/DST, FFTW's definitions have a coefficient of @math{2} in front
Chris@82 800 of the cos/sin functions so that they correspond precisely to an
Chris@82 801 even/odd DFT of size @math{N}. Some authors also include additional
Chris@82 802 multiplicative factors of
Chris@82 803 @ifinfo
Chris@82 804 sqrt(2)
Chris@82 805 @end ifinfo
Chris@82 806 @html
Chris@82 807 &radic;2
Chris@82 808 @end html
Chris@82 809 @tex
Chris@82 810 $\sqrt{2}$
Chris@82 811 @end tex
Chris@82 812 for selected inputs and outputs; this makes
Chris@82 813 the transform orthogonal, but sacrifices the direct equivalence to a
Chris@82 814 symmetric DFT.)
Chris@82 815
Chris@82 816 @subsubheading Which type do you need?
Chris@82 817
Chris@82 818 Since the required flavor of even/odd DFT depends upon your problem,
Chris@82 819 you are the best judge of this choice, but we can make a few comments
Chris@82 820 on relative efficiency to help you in your selection. In particular,
Chris@82 821 R*DFT01 and R*DFT10 tend to be slightly faster than R*DFT11
Chris@82 822 (especially for odd sizes), while the R*DFT00 transforms are sometimes
Chris@82 823 significantly slower (especially for even sizes).@footnote{R*DFT00 is
Chris@82 824 sometimes slower in FFTW because we discovered that the standard
Chris@82 825 algorithm for computing this by a pre/post-processed real DFT---the
Chris@82 826 algorithm used in FFTPACK, Numerical Recipes, and other sources for
Chris@82 827 decades now---has serious numerical problems: it already loses several
Chris@82 828 decimal places of accuracy for 16k sizes. There seem to be only two
Chris@82 829 alternatives in the literature that do not suffer similarly: a
Chris@82 830 recursive decomposition into smaller DCTs, which would require a large
Chris@82 831 set of codelets for efficiency and generality, or sacrificing a factor of
Chris@82 832 @tex
Chris@82 833 $\sim 2$
Chris@82 834 @end tex
Chris@82 835 @ifnottex
Chris@82 836 2
Chris@82 837 @end ifnottex
Chris@82 838 in speed to use a real DFT of twice the size. We currently
Chris@82 839 employ the latter technique for general @math{n}, as well as a limited
Chris@82 840 form of the former method: a split-radix decomposition when @math{n}
Chris@82 841 is odd (@math{N} a multiple of 4). For @math{N} containing many
Chris@82 842 factors of 2, the split-radix method seems to recover most of the
Chris@82 843 speed of the standard algorithm without the accuracy tradeoff.}
Chris@82 844
Chris@82 845 Thus, if only the boundary conditions on the transform inputs are
Chris@82 846 specified, we generally recommend R*DFT10 over R*DFT00 and R*DFT01 over
Chris@82 847 R*DFT11 (unless the half-sample shift or the self-inverse property is
Chris@82 848 significant for your problem).
Chris@82 849
Chris@82 850 If performance is important to you and you are using only small sizes
Chris@82 851 (say @math{n<200}), e.g. for multi-dimensional transforms, then you
Chris@82 852 might consider generating hard-coded transforms of those sizes and types
Chris@82 853 that you are interested in (@pxref{Generating your own code}).
Chris@82 854
Chris@82 855 We are interested in hearing what types of symmetric transforms you find
Chris@82 856 most useful.
Chris@82 857
Chris@82 858 @c =========>
Chris@82 859 @node The Discrete Hartley Transform, , Real even/odd DFTs (cosine/sine transforms), More DFTs of Real Data
Chris@82 860 @subsection The Discrete Hartley Transform
Chris@82 861
Chris@82 862 If you are planning to use the DHT because you've heard that it is
Chris@82 863 ``faster'' than the DFT (FFT), @strong{stop here}. The DHT is not
Chris@82 864 faster than the DFT. That story is an old but enduring misconception
Chris@82 865 that was debunked in 1987.
Chris@82 866
Chris@82 867 The discrete Hartley transform (DHT) is an invertible linear transform
Chris@82 868 closely related to the DFT. In the DFT, one multiplies each input by
Chris@82 869 @math{cos - i * sin} (a complex exponential), whereas in the DHT each
Chris@82 870 input is multiplied by simply @math{cos + sin}. Thus, the DHT
Chris@82 871 transforms @code{n} real numbers to @code{n} real numbers, and has the
Chris@82 872 convenient property of being its own inverse. In FFTW, a DHT (of any
Chris@82 873 positive @code{n}) can be specified by an r2r kind of @code{FFTW_DHT}.
Chris@82 874 @ctindex FFTW_DHT
Chris@82 875 @cindex discrete Hartley transform
Chris@82 876 @cindex DHT
Chris@82 877
Chris@82 878 Like the DFT, in FFTW the DHT is unnormalized, so computing a DHT of
Chris@82 879 size @code{n} followed by another DHT of the same size will result in
Chris@82 880 the original array multiplied by @code{n}.
Chris@82 881 @cindex normalization
Chris@82 882
Chris@82 883 The DHT was originally proposed as a more efficient alternative to the
Chris@82 884 DFT for real data, but it was subsequently shown that a specialized DFT
Chris@82 885 (such as FFTW's r2hc or r2c transforms) could be just as fast. In FFTW,
Chris@82 886 the DHT is actually computed by post-processing an r2hc transform, so
Chris@82 887 there is ordinarily no reason to prefer it from a performance
Chris@82 888 perspective.@footnote{We provide the DHT mainly as a byproduct of some
Chris@82 889 internal algorithms. FFTW computes a real input/output DFT of
Chris@82 890 @emph{prime} size by re-expressing it as a DHT plus post/pre-processing
Chris@82 891 and then using Rader's prime-DFT algorithm adapted to the DHT.}
Chris@82 892 However, we have heard rumors that the DHT might be the most appropriate
Chris@82 893 transform in its own right for certain applications, and we would be
Chris@82 894 very interested to hear from anyone who finds it useful.
Chris@82 895
Chris@82 896 If @code{FFTW_DHT} is specified for multiple dimensions of a
Chris@82 897 multi-dimensional transform, FFTW computes the separable product of 1d
Chris@82 898 DHTs along each dimension. Unfortunately, this is not quite the same
Chris@82 899 thing as a true multi-dimensional DHT; you can compute the latter, if
Chris@82 900 necessary, with at most @code{rank-1} post-processing passes
Chris@82 901 [see e.g. H. Hao and R. N. Bracewell, @i{Proc. IEEE} @b{75}, 264--266 (1987)].
Chris@82 902
Chris@82 903 For the precise mathematical definition of the DHT as used by FFTW, see
Chris@82 904 @ref{What FFTW Really Computes}.
Chris@82 905