# NAME

PDLA::FFT - FFTs for PDLA

# DESCRIPTION

!!!!!!!!!!!!!!!!!!!!!!!!!!WARNING!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! As of PDLA-2.006_04, the direction of the FFT/IFFT has been reversed to match the usage in the FFTW library and the convention in use generally. !!!!!!!!!!!!!!!!!!!!!!!!!!WARNING!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!

FFTs for PDLA. These work for arrays of any dimension, although ones with small prime factors are likely to be the quickest. The forward FFT is unnormalized while the inverse FFT is normalized so that the IFFT of the FFT returns the original values.

For historical reasons, these routines work in-place and do not recognize the in-place flag. That should be fixed.

# SYNOPSIS

```
use PDLA::FFT qw/:Func/;
fft($real, $imag);
ifft($real, $imag);
realfft($real);
realifft($real);
fftnd($real,$imag);
ifftnd($real,$imag);
$kernel = kernctr($image,$smallk);
fftconvolve($image,$kernel);
```

# DATA TYPES

The underlying C library upon which this module is based performs FFTs on both single precision and double precision floating point piddles. Performing FFTs on integer data types is not reliable. Consider the following FFT on piddles of type 'double':

```
$r = pdl(0,1,0,1);
$i = zeroes($r);
fft($r,$i);
print $r,$i;
[2 0 -2 0] [0 0 0 0]
```

But if $r and $i are unsigned short integers (ushorts):

```
$r = pdl(ushort,0,1,0,1);
$i = zeroes($r);
fft($r,$i);
print $r,$i;
[2 0 65534 0] [0 0 0 0]
```

This used to occur because PDLA::PP converts the ushort piddles to floats or doubles, performs the FFT on them, and then converts them back to ushort, causing the overflow where the amplitude of the frequency should be -2.

Therefore, if you pass in a piddle of integer datatype (byte, short, ushort, long) to any of the routines in PDLA::FFT, your data will be promoted to a double-precision piddle. If you pass in a float, the single-precision FFT will be performed.

# FREQUENCIES

For even-sized input arrays, the frequencies are packed like normal for FFTs (where N is the size of the array and D is the physical step size between elements):

` 0, 1/ND, 2/ND, ..., (N/2-1)/ND, 1/2D, -(N/2-1)/ND, ..., -1/ND.`

which can easily be obtained (taking the Nyquist frequency to be positive) using

`$kx = $real->xlinvals(-($N/2-1)/$N/$D,1/2/$D)->rotate(-($N/2 -1));`

For odd-sized input arrays the Nyquist frequency is not directly acessible, and the frequencies are

` 0, 1/ND, 2/ND, ..., (N/2-0.5)/ND, -(N/2-0.5)/ND, ..., -1/ND.`

which can easily be obtained using

`$kx = $real->xlinvals(-($N/2-0.5)/$N/$D,($N/2-0.5)/$N/$D)->rotate(-($N-1)/2);`

# ALTERNATIVE FFT PACKAGES

Various other modules - such as PDLA::FFTW and PDLA::Slatec - contain FFT routines. However, unlike PDLA::FFT, these modules are optional, and so may not be installed.

# FUNCTIONS

## fft()

Complex 1-D FFT of the "real" and "imag" arrays [inplace].

` Signature: ([o,nc]real(n); [o,nc]imag(n))`

fft($real,$imag);

## ifft()

Complex inverse 1-D FFT of the "real" and "imag" arrays [inplace].

` Signature: ([o,nc]real(n); [o,nc]imag(n))`

ifft($real,$imag);

## realfft()

One-dimensional FFT of real function [inplace].

The real part of the transform ends up in the first half of the array and the imaginary part of the transform ends up in the second half of the array.

` realfft($real);`

## realifft()

Inverse of one-dimensional realfft routine [inplace].

` realifft($real);`

## fftnd()

N-dimensional FFT over all pdl dims of input (inplace)

` fftnd($real,$imag);`

## ifftnd()

N-dimensional inverse FFT over all pdl dims of input (inplace)

` ifftnd($real,$imag);`

## fftconvolve()

N-dimensional convolution with periodic boundaries (FFT method)

```
$kernel = kernctr($image,$smallk);
fftconvolve($image,$kernel);
```

fftconvolve works inplace, and returns an error array in kernel as an accuracy check -- all the values in it should be negligible.

See also PDLA::ImageND::convolveND, which performs speed-optimized convolution with a variety of boundary conditions.

The sizes of the image and the kernel must be the same. kernctr centres a small kernel to emulate the behaviour of the direct convolution routines.

The speed cross-over between using straight convolution (PDLA::Image2D::conv2d()) and these fft routines is for kernel sizes roughly 7x7.

## convmath

` Signature: ([o,nc]a(m); [o,nc]b(m))`

Internal routine doing maths for convolution

convmath does not process bad values. It will set the bad-value flag of all output piddles if the flag is set for any of the input piddles.

## cmul

` Signature: (ar(); ai(); br(); bi(); [o]cr(); [o]ci())`

Complex multiplication

cmul does not process bad values. It will set the bad-value flag of all output piddles if the flag is set for any of the input piddles.

## cdiv

` Signature: (ar(); ai(); br(); bi(); [o]cr(); [o]ci())`

Complex division

cdiv does not process bad values. It will set the bad-value flag of all output piddles if the flag is set for any of the input piddles.

# BUGS

Where the source is marked `FIX', could re-implement using phase-shift factors on the transforms and some real-space bookkeeping, to save some temporary space and redundant transforms.

# AUTHOR

This file copyright (C) 1997, 1998 R.J.R. Williams (rjrw@ast.leeds.ac.uk), Karl Glazebrook (kgb@aaoepp.aao.gov.au), Tuomas J. Lukka, (lukka@husc.harvard.edu). All rights reserved. There is no warranty. You are allowed to redistribute this software / documentation under certain conditions. For details, see the file COPYING in the PDLA distribution. If this file is separated from the PDLA distribution, the copyright notice should be included in the file.