cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: FFTW 3.3.5: Complex One-Dimensional DFTs cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127: cannam@127:
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2.1 Complex One-Dimensional DFTs

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Plan: To bother about the best method of accomplishing an accidental result. cannam@127: [Ambrose Bierce, The Enlarged Devil’s Dictionary.] cannam@127: cannam@127:

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The basic usage of FFTW to compute a one-dimensional DFT of size cannam@127: N is simple, and it typically looks something like this code: cannam@127:

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#include <fftw3.h>
cannam@127: ...
cannam@127: {
cannam@127:     fftw_complex *in, *out;
cannam@127:     fftw_plan p;
cannam@127:     ...
cannam@127:     in = (fftw_complex*) fftw_malloc(sizeof(fftw_complex) * N);
cannam@127:     out = (fftw_complex*) fftw_malloc(sizeof(fftw_complex) * N);
cannam@127:     p = fftw_plan_dft_1d(N, in, out, FFTW_FORWARD, FFTW_ESTIMATE);
cannam@127:     ...
cannam@127:     fftw_execute(p); /* repeat as needed */
cannam@127:     ...
cannam@127:     fftw_destroy_plan(p);
cannam@127:     fftw_free(in); fftw_free(out);
cannam@127: }
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You must link this code with the fftw3 library. On Unix systems, cannam@127: link with -lfftw3 -lm. cannam@127:

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The example code first allocates the input and output arrays. You can cannam@127: allocate them in any way that you like, but we recommend using cannam@127: fftw_malloc, which behaves like cannam@127: cannam@127: malloc except that it properly aligns the array when SIMD cannam@127: instructions (such as SSE and Altivec) are available (see SIMD alignment and fftw_malloc). [Alternatively, we provide a convenient wrapper function fftw_alloc_complex(N) which has the same effect.] cannam@127: cannam@127: cannam@127:

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The data is an array of type fftw_complex, which is by default a cannam@127: double[2] composed of the real (in[i][0]) and imaginary cannam@127: (in[i][1]) parts of a complex number. cannam@127: cannam@127:

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The next step is to create a plan, which is an object cannam@127: cannam@127: that contains all the data that FFTW needs to compute the FFT. cannam@127: This function creates the plan: cannam@127:

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fftw_plan fftw_plan_dft_1d(int n, fftw_complex *in, fftw_complex *out,
cannam@127:                            int sign, unsigned flags);
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The first argument, n, is the size of the transform you are cannam@127: trying to compute. The size n can be any positive integer, but cannam@127: sizes that are products of small factors are transformed most cannam@127: efficiently (although prime sizes still use an O(n log n) algorithm). cannam@127:

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The next two arguments are pointers to the input and output arrays of cannam@127: the transform. These pointers can be equal, indicating an cannam@127: in-place transform. cannam@127: cannam@127:

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The fourth argument, sign, can be either FFTW_FORWARD cannam@127: (-1) or FFTW_BACKWARD (+1), cannam@127: cannam@127: cannam@127: and indicates the direction of the transform you are interested in; cannam@127: technically, it is the sign of the exponent in the transform. cannam@127:

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The flags argument is usually either FFTW_MEASURE or cannam@127: cannam@127: FFTW_ESTIMATE. FFTW_MEASURE instructs FFTW to run cannam@127: cannam@127: and measure the execution time of several FFTs in order to find the cannam@127: best way to compute the transform of size n. This process takes cannam@127: some time (usually a few seconds), depending on your machine and on cannam@127: the size of the transform. FFTW_ESTIMATE, on the contrary, cannam@127: does not run any computation and just builds a cannam@127: cannam@127: reasonable plan that is probably sub-optimal. In short, if your cannam@127: program performs many transforms of the same size and initialization cannam@127: time is not important, use FFTW_MEASURE; otherwise use the cannam@127: estimate. cannam@127:

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You must create the plan before initializing the input, because cannam@127: FFTW_MEASURE overwrites the in/out arrays. cannam@127: (Technically, FFTW_ESTIMATE does not touch your arrays, but you cannam@127: should always create plans first just to be sure.) cannam@127:

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Once the plan has been created, you can use it as many times as you cannam@127: like for transforms on the specified in/out arrays, cannam@127: computing the actual transforms via fftw_execute(plan): cannam@127:

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void fftw_execute(const fftw_plan plan);
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The DFT results are stored in-order in the array out, with the cannam@127: zero-frequency (DC) component in out[0]. cannam@127: cannam@127: If in != out, the transform is out-of-place and the input cannam@127: array in is not modified. Otherwise, the input array is cannam@127: overwritten with the transform. cannam@127:

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If you want to transform a different array of the same size, you cannam@127: can create a new plan with fftw_plan_dft_1d and FFTW cannam@127: automatically reuses the information from the previous plan, if cannam@127: possible. Alternatively, with the “guru” interface you can apply a cannam@127: given plan to a different array, if you are careful. cannam@127: See FFTW Reference. cannam@127:

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When you are done with the plan, you deallocate it by calling cannam@127: fftw_destroy_plan(plan): cannam@127:

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void fftw_destroy_plan(fftw_plan plan);
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If you allocate an array with fftw_malloc() you must deallocate cannam@127: it with fftw_free(). Do not use free() or, heaven cannam@127: forbid, delete. cannam@127: cannam@127:

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FFTW computes an unnormalized DFT. Thus, computing a forward cannam@127: followed by a backward transform (or vice versa) results in the original cannam@127: array scaled by n. For the definition of the DFT, see What FFTW Really Computes. cannam@127: cannam@127: cannam@127:

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If you have a C compiler, such as gcc, that supports the cannam@127: C99 standard, and you #include <complex.h> before cannam@127: <fftw3.h>, then fftw_complex is the native cannam@127: double-precision complex type and you can manipulate it with ordinary cannam@127: arithmetic. Otherwise, FFTW defines its own complex type, which is cannam@127: bit-compatible with the C99 complex type. See Complex numbers. cannam@127: (The C++ <complex> template class may also be usable via a cannam@127: typecast.) cannam@127: cannam@127:

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To use single or long-double precision versions of FFTW, replace the cannam@127: fftw_ prefix by fftwf_ or fftwl_ and link with cannam@127: -lfftw3f or -lfftw3l, but use the same cannam@127: <fftw3.h> header file. cannam@127: cannam@127:

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Many more flags exist besides FFTW_MEASURE and cannam@127: FFTW_ESTIMATE. For example, use FFTW_PATIENT if you’re cannam@127: willing to wait even longer for a possibly even faster plan (see FFTW Reference). cannam@127: cannam@127: You can also save plans for future use, as described by Words of Wisdom-Saving Plans. cannam@127:

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