Provided by: pdl_2.007-5_amd64 bug

NAME

       PDL::Transform - Coordinate transforms, image warping, and N-D functions

SYNOPSIS

       use PDL::Transform;

        my $t = new PDL::Transform::<type>(<opt>)

        $out = $t->apply($in)  # Apply transform to some N-vectors (Transform method)
        $out = $in->apply($t)  # Apply transform to some N-vectors (PDL method)

        $im1 = $t->map($im);   # Transform image coordinates (Transform method)
        $im1 = $im->map($t);   # Transform image coordinates (PDL method)

        $t2 = $t->compose($t1);  # compose two transforms
        $t2 = $t x $t1;          # compose two transforms (by analogy to matrix mult.)

        $t3 = $t2->inverse();    # invert a transform
        $t3 = !$t2;              # invert a transform (by analogy to logical "not")

DESCRIPTION

       PDL::Transform is a convenient way to represent coordinate transformations and resample
       images.  It embodies functions mapping R^N -> R^M, both with and without inverses.
       Provision exists for parametrizing functions, and for composing them.  You can use this
       part of the Transform object to keep track of arbitrary functions mapping R^N -> R^M with
       or without inverses.

       The simplest way to use a Transform object is to transform vector data between coordinate
       systems.  The apply method accepts a PDL whose 0th dimension is coordinate index (all
       other dimensions are threaded over) and transforms the vectors into the new coordinate
       system.

       Transform also includes image resampling, via the map method.  You define a coordinate
       transform using a Transform object, then use it to remap an image PDL.  The output is a
       remapped, resampled image.

       You can define and compose several transformations, then apply them all at once to an
       image.  The image is interpolated only once, when all the composed transformations are
       applied.

       In keeping with standard practice, but somewhat counterintuitively, the map engine uses
       the inverse transform to map coordinates FROM the destination dataspace (or image plane)
       TO the source dataspace; hence PDL::Transform keeps track of both the forward and inverse
       transform.

       For terseness and convenience, most of the constructors are exported into the current
       package with the name "t_<transform>", so the following (for example) are synonyms:

         $t = new PDL::Transform::Radial();  # Long way

         $t = t_radial();                    # Short way

       Several math operators are overloaded, so that you can compose and invert functions with
       expression syntax instead of method syntax (see below).

EXAMPLE

       Coordinate transformations and mappings are a little counterintuitive at first.  Here are
       some examples of transforms in action:

          use PDL::Transform;
          $a = rfits('m51.fits');   # Substitute path if necessary!
          $ts = t_linear(Scale=>3); # Scaling transform

          $w = pgwin(xs);
          $w->imag($a);

          ## Grow m51 by a factor of 3; origin is at lower left.
          $b = $ts->map($a,{pix=>1});    # pix option uses direct pixel coord system
          $w->imag($b);

          ## Shrink m51 by a factor of 3; origin still at lower left.
          $c = $ts->unmap($a, {pix=>1});
          $w->imag($c);

          ## Grow m51 by a factor of 3; origin is at scientific origin.
          $d = $ts->map($a,$a->hdr);    # FITS hdr template prevents autoscaling
          $w->imag($d);

          ## Shrink m51 by a factor of 3; origin is still at sci. origin.
          $e = $ts->unmap($a,$a->hdr);
          $w->imag($e);

          ## A no-op: shrink m51 by a factor of 3, then autoscale back to size
          $f = $ts->map($a);            # No template causes autoscaling of output

OPERATOR OVERLOADS

       '!'
          The bang is a unary inversion operator.  It binds exactly as tightly as the normal bang
          operator.

       'x'
          By analogy to matrix multiplication, 'x' is the compose operator, so these two
          expressions are equivalent:

            $f->inverse()->compose($g)->compose($f) # long way
            !$f x $g x $f                           # short way

          Both of those expressions are equivalent to the mathematical expression f^-1 o g o f,
          or f^-1(g(f(x))).

       '**'
          By analogy to numeric powers, you can apply an operator a positive integer number of
          times with the ** operator:

            $f->compose($f)->compose($f)  # long way
            $f**3                         # short way

INTERNALS

       Transforms are perl hashes.  Here's a list of the meaning of each key:

       func
          Ref to a subroutine that evaluates the transformed coordinates.  It's called with the
          input coordinate, and the "params" hash.  This springboarding is done via explicit ref
          rather than by subclassing, for convenience both in coding new transforms (just add the
          appropriate sub to the module) and in adding custom transforms at run-time. Note that,
          if possible, new "func"s should support inplace operation to save memory when the data
          are flagged inplace.  But "func" should always return its result even when flagged to
          compute in-place.

          "func" should treat the 0th dimension of its input as a dimensional index (running
          0..N-1 for R^N operation) and thread over all other input dimensions.

       inv
          Ref to an inverse method that reverses the transformation.  It must accept the same
          "params" hash that the forward method accepts.  This key can be left undefined in cases
          where there is no inverse.

       idim, odim
          Number of useful dimensions for indexing on the input and output sides (ie the order of
          the 0th dimension of the coordinates to be fed in or that come out).  If this is set to
          0, then as many are allocated as needed.

       name
          A shorthand name for the transformation (convenient for debugging).  You should plan on
          using UNIVERAL::isa to identify classes of transformation, e.g. all linear
          transformations should be subclasses of PDL::Transform::Linear.  That makes it easier
          to add smarts to, e.g., the compose() method.

       itype
          An array containing the name of the quantity that is expected from the input piddle for
          the transform, for each dimension.  This field is advisory, and can be left blank if
          there's no obvious quantity associated with the transform.  This is analogous to the
          CTYPEn field used in FITS headers.

       oname
          Same as itype, but reporting what quantity is delivered for each dimension.

       iunit
          The units expected on input, if a specific unit (e.g. degrees) is expected.  This field
          is advisory, and can be left blank if there's no obvious unit associated with the
          transform.

       ounit
          Same as iunit, but reporting what quantity is delivered for each dimension.

       params
          Hash ref containing relevant parameters or anything else the func needs to work right.

       is_inverse
          Bit indicating whether the transform has been inverted.  That is useful for some
          stringifications (see the PDL::Transform::Linear stringifier), and may be useful for
          other things.

       Transforms should be inplace-aware where possible, to prevent excessive memory usage.

       If you define a new type of transform, consider generating a new stringify method for it.
       Just define the sub "stringify" in the subclass package.  It should call SUPER::stringify
       to generate the first line (though the PDL::Transform::Composition bends this rule by
       tweaking the top-level line), then output (indented) additional lines as necessary to
       fully describe the transformation.

NOTES

       Transforms have a mechanism for labeling the units and type of each coordinate, but it is
       just advisory.  A routine to identify and, if necessary, modify units by scaling would be
       a good idea.  Currently, it just assumes that the coordinates are correct for (e.g.)  FITS
       scientific-to-pixel transformations.

       Composition works OK but should probably be done in a more sophisticated way so that, for
       example, linear transformations are combined at the matrix level instead of just strung
       together pixel-to-pixel.

FUNCTIONS

       There are both operators and constructors.  The constructors are all exported, all begin
       with "t_", and all return objects that are subclasses of PDL::Transform.

       The apply, invert, map, and unmap methods are also exported to the "PDL" package: they are
       both Transform methods and PDL methods.

FUNCTIONS

   apply
         Signature: (data(); PDL::Transform t)

         $out = $data->apply($t);
         $out = $t->apply($data);

       Apply a transformation to some input coordinates.

       In the example, $t is a PDL::Transform and $data is a PDL to be interpreted as a
       collection of N-vectors (with index in the 0th dimension).  The output is a similar but
       transformed PDL.

       For convenience, this is both a PDL method and a Transform method.

   invert
         Signature: (data(); PDL::Transform t)

         $out = $t->invert($data);
         $out = $data->invert($t);

       Apply an inverse transformation to some input coordinates.

       In the example, $t is a PDL::Transform and $data is a piddle to be interpreted as a
       collection of N-vectors (with index in the 0th dimension).  The output is a similar
       piddle.

       For convenience this is both a PDL method and a PDL::Transform method.

   map
         Signature: (k0(); SV *in; SV *out; SV *map; SV *boundary; SV *method;
                           SV *big; SV *blur; SV *sv_min; SV *flux; SV *bv)

   PDL::match
         $b = $a->match($c);                  # Match $c's header and size
         $b = $a->match([100,200]);           # Rescale to 100x200 pixels
         $b = $a->match([100,200],{rect=>1}); # Rescale and remove rotation/skew.

       Resample a scientific image to the same coordinate system as another.

       The example above is syntactic sugar for

        $b = $a->map(t_identity, $c, ...);

       it resamples the input PDL with the identity transformation in scientific coordinates, and
       matches the pixel coordinate system to $c's FITS header.

       There is one difference between match and map: match makes the "rectify" option to "map"
       default to 0, not 1.  This only affects matching where autoscaling is required (i.e. the
       array ref example above).  By default, that example simply scales $a to the new size and
       maintains any rotation or skew in its scientiic-to-pixel coordinate transform.

   map
         $b = $a->map($xform,[<template>],[\%opt]); # Distort $a with tranform $xform
         $b = $a->map(t_identity,[$pdl],[\%opt]); # rescale $a to match $pdl's dims.

       Resample an image or N-D dataset using a coordinate transform.

       The data are resampled so that the new pixel indices are proportional to the transformed
       coordinates rather than the original ones.

       The operation uses the inverse transform: each output pixel location is inverse-
       transformed back to a location in the original dataset, and the value is interpolated or
       sampled appropriately and copied into the output domain.  A variety of sampling options
       are available, trading off speed and mathematical correctness.

       For convenience, this is both a PDL method and a PDL::Transform method.

       "map" is FITS-aware: if there is a FITS header in the input data, then the coordinate
       transform acts on the scientific coordinate system rather than the pixel coordinate
       system.

       By default, the output coordinates are separated from pixel coordinates by a single layer
       of indirection.  You can specify the mapping between output transform (scientific)
       coordinates to pixel coordinates using the "orange" and "irange" options (see below), or
       by supplying a FITS header in the template.

       If you don't specify an output transform, then the output is autoscaled: "map" transforms
       a few vectors in the forward direction to generate a mapping that will put most of the
       data on the image plane, for most transformations.  The calculated mapping gets stuck in
       the output's FITS header.

       Autoscaling is especially useful for rescaling images -- if you specify the identity
       transform and allow autoscaling, you duplicate the functionality of rescale2d, but with
       more options for interpolation.

       You can operate in pixel space, and avoid autoscaling of the output, by setting the
       "nofits" option (see below).

       The output has the same data type as the input.  This is a feature, but it can lead to
       strange-looking banding behaviors if you use interpolation on an integer input variable.

       The "template" can be one of:

       •  a PDL

          The PDL and its header are copied to the output array, which is then populated with
          data.  If the PDL has a FITS header, then the FITS transform is automatically applied
          so that $t applies to the output scientific coordinates and not to the output pixel
          coordinates.  In this case the NAXIS fields of the FITS header are ignored.

       •  a FITS header stored as a hash ref

          The FITS NAXIS fields are used to define the output array, and the FITS transformation
          is applied to the coordinates so that $t applies to the output scientific coordinates.

       •  a list ref

          This is a list of dimensions for the output array.  The code estimates appropriate
          pixel scaling factors to fill the available space.  The scaling factors are placed in
          the output FITS header.

       •  nothing

          In this case, the input image size is used as a template, and scaling is done as with
          the list ref case (above).

       OPTIONS:

       The following options are interpreted:

       b, bound, boundary, Boundary (default = 'truncate')
          This is the boundary condition to be applied to the input image; it is passed verbatim
          to range or interpND in the sampling or interpolating stage.  Other values are
          'forbid','extend', and 'periodic'.  You can abbreviate this to a single letter.  The
          default 'truncate' causes the entire notional space outside the original image to be
          filled with 0.

       pix, Pixel, nf, nofits, NoFITS (default = 0)
          If you set this to a true value, then FITS headers and interpretation are ignored; the
          transformation is treated as being in raw pixel coordinates.

       j, J, just, justify, Justify (default = 0)
          If you set this to 1, then output pixels are autoscaled to have unit aspect ratio in
          the output coordinates.  If you set it to a non-1 value, then it is the aspect ratio
          between the first dimension and all subsequent dimensions -- or, for a 2-D
          transformation, the scientific pixel aspect ratio.  Values less than 1 shrink the scale
          in the first dimension compared to the other dimensions; values greater than 1 enlarge
          it compared to the other dimensions.  (This is the same sense as in the
          PGPLOTinterface.)

       ir, irange, input_range, Input_Range
          This is a way to modify the autoscaling.  It specifies the range of input scientific
          (not necessarily pixel) coordinates that you want to be mapped to the output image.  It
          can be either a nested array ref or a piddle.  The 0th dim (outside coordinate in the
          array ref) is dimension index in the data; the 1st dim should have order 2.  For
          example, passing in either [[-1,2],[3,4]] or pdl([[-1,2],[3,4]]) limites the map to the
          quadrilateral in input space defined by the four points (-1,3), (-1,4), (2,4), and
          (2,3).

          As with plain autoscaling, the quadrilateral gets sparsely sampled by the autoranger,
          so pathological transformations can give you strange results.

          This parameter is overridden by "orange", below.

       or, orange, output_range, Output_Range
          This sets the window of output space that is to be sampled onto the output array.  It
          works exactly like "irange", except that it specifies a quadrilateral in output space.
          Since the output pixel array is itself a quadrilateral, you get pretty much exactly
          what you asked for.

          This parameter overrides "irange", if both are specified.  It forces rectification of
          the output (so that scientific axes align with the pixel grid).

       r, rect, rectify
          This option defaults TRUE and controls how autoscaling is performed.  If it is true or
          undefined, then autoscaling adjusts so that pixel coordinates in the output image are
          proportional to individual scientific coordinates.  If it is false, then autoscaling
          automatically applies the inverse of any input FITS transformation *before* autoscaling
          the pixels.  In the special case of linear transformations, this preserves the
          rectangular shape of the original pixel grid and makes output pixel coordinate
          proportional to input coordinate.

       m, method, Method
          This option controls the interpolation method to be used.  Interpolation greatly
          affects both speed and quality of output.  For most cases the option is directly passed
          to interpND for interpolation.  Possible options, in order from fastest to slowest,
          are:

          •  s, sample (default for ints)

             Pixel values in the output plane are sampled from the closest data value in the
             input plane.  This is very fast but not very accurate for either magnification or
             decimation (shrinking).  It is the default for templates of integer type.

          •  l, linear (default for floats)

             Pixel values are linearly interpolated from the closest data value in the input
             plane.  This is reasonably fast but only accurate for magnification.  Decimation
             (shrinking) of the image causes aliasing and loss of photometry as features fall
             between the samples.  It is the default for floating-point templates.

          •  c, cubic

             Pixel values are interpolated using an N-cubic scheme from a 4-pixel N-cube around
             each coordinate value.  As with linear interpolation, this is only accurate for
             magnification.

          •  f, fft

             Pixel values are interpolated using the term coefficients of the Fourier transform
             of the original data.  This is the most appropriate technique for some kinds of
             data, but can yield undesired "ringing" for expansion of normal images.  Best suited
             to studying images with repetitive or wavelike features.

          •  h, hanning

             Pixel values are filtered through a spatially-variable filter tuned to the computed
             Jacobian of the transformation, with hanning-window (cosine) pixel rolloff in each
             dimension.  This prevents aliasing in the case where the image is distorted or
             shrunk, but allows small amounts of aliasing at pixel edges wherever the image is
             enlarged.

          •  g, gaussian, j, jacobian

             Pixel values are filtered through a spatially-variable filter tuned to the computed
             Jacobian of the transformation, with radial Gaussian rolloff.  This is the most
             accurate resampling method, in the sense of introducing the fewest artifacts into a
             properly sampled data set.

       blur, Blur (default = 1.0)
          This value scales the input-space footprint of each output pixel in the gaussian and
          hanning methods. It's retained for historical reasons.  Larger values yield blurrier
          images; values significantly smaller than unity cause aliasing.

       sv, SV (default = 1.0)
          This value lets you set the lower limit of the transformation's singular values in the
          hanning and gaussian methods, limiting the minimum radius of influence associated with
          each output pixel.  Large numbers yield smoother interpolation in magnified parts of
          the image but don't affect reduced parts of the image.

       big, Big (default = 0.2)
          This is the largest allowable input spot size which may be mapped to a single output
          pixel by the hanning and gaussian methods, in units of the largest non-thread input
          dimension.  (i.e. the default won't let you reduce the original image to less than 5
          pixels across).  This places a limit on how long the processing can take for
          pathological transformations.  Smaller numbers keep the code from hanging for a long
          time; larger numbers provide for photometric accuracy in more pathological cases.
          Numbers larer than 1.0 are silly, because they allow the entire input array to be
          compressed into a region smaller than a single pixel.

          Wherever an output pixel would require averaging over an area that is too big in input
          space, it instead gets NaN or the equivalent (bad values are not yet supported).

       phot, photometry, Photometry
          This lets you set the style of photometric conversion to be used in the hanning or
          gaussian methods.  You may choose:

          •  0, s, surf, surface, Surface (default)

             (this is the default): surface brightness is preserved over the transformation, so
             features maintain their original intensity.  This is what the sampling and
             interpolation methods do.

          •  1, f, flux, Flux

             Total flux is preserved over the transformation, so that the brightness integral
             over image regions is preserved.  Parts of the image that are shrunk wind up
             brighter; parts that are enlarged end up fainter.

       VARIABLE FILTERING:

       The 'hanning' and 'gaussian' methods of interpolation give photometrically accurate
       resampling of the input data for arbitrary transformations.  At each pixel, the code
       generates a linear approximation to the input transformation, and uses that linearization
       to estimate the "footprint" of the output pixel in the input space.  The output value is a
       weighted average of the appropriate input spaces.

       A caveat about these methods is that they assume the transformation is continuous.
       Transformations that contain discontinuities will give incorrect results near the
       discontinuity.  In particular, the 180th meridian isn't handled well in lat/lon mapping
       transformations (see PDL::Transform::Cartography) -- pixels along the 180th meridian get
       the average value of everything along the parallel occupied by the pixel.  This flaw is
       inherent in the assumptions that underly creating a Jacobian matrix.  Maybe someone will
       write code to work around it.  Maybe that someone is you.

       map 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.

   unmap
        Signature: (data(); PDL::Transform a; template(); \%opt)

         $out_image = $in_image->unmap($t,[<options>],[<template>]);
         $out_image = $t->unmap($in_image,[<options>],[<template>]);

       Map an image or N-D dataset using the inverse as a coordinate transform.

       This convenience function just inverts $t and calls map on the inverse; everything works
       the same otherwise.  For convenience, it is both a PDL method and a PDL::Transform method.

   t_inverse
         $t2 = t_inverse($t);
         $t2 = $t->inverse;
         $t2 = $t ** -1;
         $t2 = !$t;

       Return the inverse of a PDL::Transform.  This just reverses the func/inv, idim/odim,
       itype/otype, and iunit/ounit pairs.  Note that sometimes you end up with a transform that
       cannot be applied or mapped, because either the mathematical inverse doesn't exist or the
       inverse func isn't implemented.

       You can invert a transform by raising it to a negative power, or by negating it with '!'.

       The inverse transform remains connected to the main transform because they both point to
       the original parameters hash.  That turns out to be useful.

   t_compose
         $f2 = t_compose($f, $g,[...]);
         $f2 = $f->compose($g[,$h,$i,...]);
         $f2 = $f x $g x ...;

       Function composition: f(g(x)), f(g(h(x))), ...

       You can also compose transforms using the overloaded matrix-multiplication (nee repeat)
       operator 'x'.

       This is accomplished by inserting a splicing code ref into the "func" and "inv" slots.  It
       combines multiple compositions into a single list of transforms to be executed in order,
       fram last to first (in keeping with standard mathematical notation).  If one of the
       functions is itself a composition, it is interpolated into the list rather than left
       separate.  Ultimately, linear transformations may also be combined within the list.

       No checking is done that the itype/otype and iunit/ounit fields are compatible -- that may
       happen later, or you can implement it yourself if you like.

   t_wrap
         $g1fg = $f->wrap($g);
         $g1fg = t_wrap($f,$g);

       Shift a transform into a different space by 'wrapping' it with a second.

       This is just a convenience function for two t_compose calls. "$a->wrap($b)" is the same as
       "(!$b) x $a x $b": the resulting transform first hits the data with $b, then with $a, then
       with the inverse of $b.

       For example, to shift the origin of rotation, do this:

         $im = rfits('m51.fits');
         $tf = t_fits($im);
         $tr = t_linear({rot=>30});
         $im1 = $tr->map($tr);               # Rotate around pixel origin
         $im2 = $tr->map($tr->wrap($tf));    # Rotate round FITS scientific origin

   t_identity
         my $xform = t_identity
         my $xform = new PDL::Transform;

       Generic constructor generates the identity transform.

       This constructor really is trivial -- it is mainly used by the other transform
       constructors.  It takes no parameters and returns the identity transform.

   t_lookup
         $f = t_lookup($lookup, {<options>});

       Transform by lookup into an explicit table.

       You specify an N+1-D PDL that is interpreted as an N-D lookup table of column vectors
       (vector index comes last).  The last dimension has order equal to the output
       dimensionality of the transform.

       For added flexibility in data space, You can specify pre-lookup linear scaling and offset
       of the data.  Of course you can specify the interpolation method to be used.  The linear
       scaling stuff is a little primitive; if you want more, try composing the linear transform
       with this one.

       The prescribed values in the lookup table are treated as pixel-centered: that is, if your
       input array has N elements per row then valid data exist between the locations (-0.5) and
       (N-0.5) in lookup pixel space, because the pixels (which are numbered from 0 to N-1) are
       centered on their locations.

       Lookup is done using interpND, so the boundary conditions and threading behaviour follow
       from that.

       The indexed-over dimensions come first in the table, followed by a single dimension
       containing the column vector to be output for each set of other dimensions -- ie to output
       2-vectors from 2 input parameters, each of which can range from 0 to 49, you want an index
       that has dimension list (50,50,2).  For the identity lookup table you could use
       "cat(xvals(50,50),yvals(50,50))".

       If you want to output a single value per input vector, you still need that last index
       threading dimension -- if necessary, use "dummy(-1,1)".

       The lookup index scaling is: out = lookup[ (scale * data) + offset ].

       A simplistic table inversion routine is included.  This means that you can (for example)
       use the "map" method with "t_lookup" transformations.  But the table inversion is
       exceedingly slow, and not practical for tables larger than about 100x100.  The inversion
       table is calculated in its entirety the first time it is needed, and then cached until the
       object is destroyed.

       Options are listed below; there are several synonyms for each.

       s, scale, Scale
          (default 1.0) Specifies the linear amount of scaling to be done before lookup.  You can
          feed in a scalar or an N-vector; other values may cause trouble.  If you want to save
          space in your table, then specify smaller scale numbers.

       o, offset, Offset
          (default 0.0) Specifies the linear amount of offset before lookup.  This is only a
          scalar, because it is intended to let you switch to corner-centered coordinates if you
          want to (just feed in o=-0.25).

       b, bound, boundary, Boundary
          Boundary condition to be fed to interpND

       m, method, Method
          Interpolation method to be fed to interpND

       EXAMPLE

       To scale logarithmically the Y axis of m51, try:

         $a = float rfits('m51.fits');
         $lookup = xvals(128,128) -> cat( 10**(yvals(128,128)/50) * 256/10**2.55 );
         $t = t_lookup($lookup);
         $b = $t->map($a);

       To do the same thing but with a smaller lookup table, try:

         $lookup = 16 * xvals(17,17)->cat(10**(yvals(17,17)/(100/16)) * 16/10**2.55);
         $t = t_lookup($lookup,{scale=>1/16.0});
         $b = $t->map($a);

       (Notice that, although the lookup table coordinates are is divided by 16, it is a 17x17 --
       so linear interpolation works right to the edge of the original domain.)

       NOTES

       Inverses are not yet implemented -- the best way to do it might be by judicious use of
       map() on the forward transformation.

       the type/unit fields are ignored.

   t_linear
       $f = t_linear({options});

       Linear (affine) transformations with optional offset

       t_linear implements simple matrix multiplication with offset, also known as the affine
       transformations.

       You specify the linear transformation with pre-offset, a mixing matrix, and a post-offset.
       That overspecifies the transformation, so you can choose your favorite method to specify
       the transform you want.  The inverse transform is automagically generated, provided that
       it actually exists (the transform matrix is invertible).  Otherwise, the inverse transform
       just croaks.

       Extra dimensions in the input vector are ignored, so if you pass a 3xN vector into a 3-D
       linear transformation, the final dimension is passed through unchanged.

       The options you can usefully pass in are:

       s, scale, Scale
          A scaling scalar (heh), vector, or matrix.  If you specify a vector it is treated as a
          diagonal matrix (for convenience).  It gets left-multiplied with the transformation
          matrix you specify (or the identity), so that if you specify both a scale and a matrix
          the scaling is done after the rotation or skewing or whatever.

       r, rot, rota, rotation, Rotation
          A rotation angle in degrees -- useful for 2-D and 3-D data only.  If you pass in a
          scalar, it specifies a rotation from the 0th axis toward the 1st axis.  If you pass in
          a 3-vector as either a PDL or an array ref (as in "rot=>[3,4,5]"), then it is treated
          as a set of Euler angles in three dimensions, and a rotation matrix is generated that
          does the following, in order:

          •  Rotate by rot->(2) degrees from 0th to 1st axis

          •  Rotate by rot->(1) degrees from the 2nd to the 0th axis

          •  Rotate by rot->(0) degrees from the 1st to the 2nd axis

          The rotation matrix is left-multiplied with the transformation matrix you specify, so
          that if you specify both rotation and a general matrix the rotation happens after the
          more general operation -- though that is deprecated.

          Of course, you can duplicate this functionality -- and get more general -- by
          generating your own rotation matrix and feeding it in with the "matrix" option.

       m, matrix, Matrix
          The transformation matrix.  It does not even have to be square, if you want to change
          the dimensionality of your input.  If it is invertible (note: must be square for that),
          then you automagically get an inverse transform too.

       pre, preoffset, offset, Offset
          The vector to be added to the data before they get multiplied by the matrix (equivalent
          of CRVAL in FITS, if you are converting from scientific to pixel units).

       post, postoffset, shift, Shift
          The vector to be added to the data after it gets multiplied by the matrix (equivalent
          of CRPIX-1 in FITS, if youre converting from scientific to pixel units).

       d, dim, dims, Dims
          Most of the time it is obvious how many dimensions you want to deal with: if you supply
          a matrix, it defines the transformation; if you input offset vectors in the "pre" and
          "post" options, those define the number of dimensions.  But if you only supply scalars,
          there is no way to tell and the default number of dimensions is 2.  This provides a way
          to do, e.g., 3-D scaling: just set "{s="<scale-factor>, dims=>3}> and you are on your
          way.

       NOTES

       the type/unit fields are currently ignored by t_linear.

   t_scale
         $f = t_scale(<scale>)

       Convenience interface to t_linear.

       t_scale produces a tranform that scales around the origin by a fixed amount.  It acts
       exactly the same as "t_linear(Scale="\<scale\>)>.

   t_offset
         $f = t_offset(<shift>)

       Convenience interface to t_linear.

       t_offset produces a transform that shifts the origin to a new location.  It acts exactly
       the same as "t_linear(Pre="\<shift\>)>.

   t_rot
         $f = t_rot(<rotation-in-degrees>)

       Convenience interface to t_linear.

       t_rot produces a rotation transform in 2-D (scalar), 3-D (3-vector), or N-D (matrix).  It
       acts exactly the same as "t_linear(Rot="\<shift\>)>.

   t_fits
         $f = t_fits($fits,[option]);

       FITS pixel-to-scientific transformation with inverse

       You feed in a hash ref or a PDL with one of those as a header, and you get back a
       transform that converts 0-originated, pixel-centered coordinates into scientific
       coordinates via the transformation in the FITS header.  For most FITS headers, the
       transform is reversible, so applying the inverse goes the other way.  This is just a
       convenience subclass of PDL::Transform::Linear, but with unit/type support using the FITS
       header you supply.

       For now, this transform is rather limited -- it really ought to accept units differences
       and stuff like that, but they are just ignored for now.  Probably that would require
       putting units into the whole transform framework.

       This transform implements the linear transform part of the WCS FITS standard outlined in
       Greisen & Calabata 2002 (A&A in press; find it at
       "http://arxiv.org/abs/astro-ph/0207407").

       As a special case, you can pass in the boolean option "ignore_rgb" (default 0), and if you
       pass in a 3-D FITS header in which the last dimension has exactly 3 elements, it will be
       ignored in the output transformation.  That turns out to be handy for handling rgb images.

   t_code
         $f = t_code(<func>,[<inv>],[options]);

       Transform implementing arbitrary perl code.

       This is a way of getting quick-and-dirty new transforms.  You pass in anonymous (or
       otherwise) code refs pointing to subroutines that implement the forward and, optionally,
       inverse transforms.  The subroutines should accept a data PDL followed by a parameter hash
       ref, and return the transformed data PDL.  The parameter hash ref can be set via the
       options, if you want to.

       Options that are accepted are:

       p,params
          The parameter hash that will be passed back to your code (defaults to the empty hash).

       n,name
          The name of the transform (defaults to "code").

       i, idim (default 2)
          The number of input dimensions (additional ones should be passed through unchanged)

       o, odim (default 2)
          The number of output dimensions

       itype
          The type of the input dimensions, in an array ref (optional and advisiory)

       otype
          The type of the output dimension, in an array ref (optional and advisory)

       iunit
          The units that are expected for the input dimensions (optional and advisory)

       ounit
          The units that are returned in the output (optional and advisory).

       The code variables are executable perl code, either as a code ref or as a string that will
       be eval'ed to produce code refs.  If you pass in a string, it gets eval'ed at call time to
       get a code ref.  If it compiles OK but does not return a code ref, then it gets re-
       evaluated with "sub { ... }" wrapped around it, to get a code ref.

       Note that code callbacks like this can be used to do really weird things and generate
       equally weird results -- caveat scriptor!

   t_cylindrical
   t_radial
         $f = t_radial(<options>);

       Convert Cartesian to radial/cylindrical coordinates.  (2-D/3-D; with inverse)

       Converts 2-D Cartesian to radial (theta,r) coordinates.  You can choose direct or
       conformal conversion.  Direct conversion preserves radial distance from the origin;
       conformal conversion preserves local angles, so that each small-enough part of the image
       only appears to be scaled and rotated, not stretched.  Conformal conversion puts the
       radius on a logarithmic scale, so that scaling of the original image plane is equivalent
       to a simple offset of the transformed image plane.

       If you use three or more dimensions, the higher dimensions are ignored, yielding a
       conversion from Cartesian to cylindrical coordinates, which is why there are two aliases
       for the same transform.  If you use higher dimensionality than 2, you must manually
       specify the origin or you will get dimension mismatch errors when you apply the transform.

       Theta runs clockwise instead of the more usual counterclockwise; that is to preserve the
       mirror sense of small structures.

       OPTIONS:

       d, direct, Direct
          Generate (theta,r) coordinates out (this is the default); incompatible with Conformal.
          Theta is in radians, and the radial coordinate is in the units of distance in the input
          plane.

       r0, c, conformal, Conformal
          If defined, this floating-point value causes t_radial to generate (theta, ln(r/r0))
          coordinates out.  Theta is in radians, and the radial coordinate varies by 1 for each
          e-folding of the r0-scaled distance from the input origin.  The logarithmic scaling is
          useful for viewing both large and small things at the same time, and for keeping shapes
          of small things preserved in the image.

       o, origin, Origin [default (0,0,0)]
          This is the origin of the expansion.  Pass in a PDL or an array ref.

       u, unit, Unit [default 'radians']
          This is the angular unit to be used for the azimuth.

       EXAMPLES

       These examples do transformations back into the same size image as they started from; by
       suitable use of the "transform" option to unmap you can send them to any size array you
       like.

       Examine radial structure in M51: Here, we scale the output to stretch 2*pi radians out to
       the full image width in the horizontal direction, and to stretch 1 radius out to a
       diameter in the vertical direction.

         $a = rfits('m51.fits');
         $ts = t_linear(s => [250/2.0/3.14159, 2]); # Scale to fill orig. image
         $tu = t_radial(o => [130,130]);            # Expand around galactic core
         $b = $a->map($ts x $tu);

       Examine radial structure in M51 (conformal): Here, we scale the output to stretch 2*pi
       radians out to the full image width in the horizontal direction, and scale the vertical
       direction by the exact same amount to preserve conformality of the operation.  Notice that
       each piece of the image looks "natural" -- only scaled and not stretched.

         $a = rfits('m51.fits')
         $ts = t_linear(s=> 250/2.0/3.14159);  # Note scalar (heh) scale.
         $tu = t_radial(o=> [130,130], r0=>5); # 5 pix. radius -> bottom of image
         $b = $ts->compose($tu)->unmap($a);

   t_quadratic
         $t = t_quadratic(<options>);

       Quadratic scaling -- cylindrical pincushion (n-d; with inverse)

       Quadratic scaling emulates pincushion in a cylindrical optical system: separate quadratic
       scaling is applied to each axis.  You can apply separate distortion along any of the
       principal axes.  If you want different axes, use t_wrap and t_linear to rotate them to the
       correct angle.  The scaling options may be scalars or vectors; if they are scalars then
       the expansion is isotropic.

       The formula for the expansion is:

           f(a) = ( <a> + <strength> * a^2/<L_0> ) / (abs(<strength>) + 1)

       where <strength> is a scaling coefficient and <L_0> is a fundamental length scale.
       Negative values of <strength> result in a pincushion contraction.

       Note that, because quadratic scaling does not have a strict inverse for coordinate systems
       that cross the origin, we cheat slightly and use $x * abs($x)  rather than $x**2.  This
       does the Right thing for pincushion and barrel distortion, but means that t_quadratic does
       not behave exactly like t_cubic with a null cubic strength coefficient.

       OPTIONS

       o,origin,Origin
          The origin of the pincushion. (default is the, er, origin).

       l,l0,length,Length,r0
          The fundamental scale of the transformation -- the radius that remains unchanged.
          (default=1)

       s,str,strength,Strength
          The relative strength of the pincushion. (default = 0.1)

       honest (default=0)
          Sets whether this is a true quadratic coordinate transform.  The more common form is
          pincushion or cylindrical distortion, which switches branches of the square root at the
          origin (for symmetric expansion).  Setting honest to a non-false value forces true
          quadratic behavior, which is not mirror-symmetric about the origin.

       d, dim, dims, Dims
          The number of dimensions to quadratically scale (default is the dimensionality of your
          input vectors)

   t_cubic
         $t = t_cubic(<options>);

       Cubic scaling - cubic pincushion (n-d; with inverse)

       Cubic scaling is a generalization of t_quadratic to a purely cubic expansion.

       The formula for the expansion is:

           f(a) = ( a' + st * a'^3/L_0^2 ) / (1 + abs(st)) + origin

       where a'=(a-origin).  That is a simple pincushion expansion/contraction that is fixed at a
       distance of L_0 from the origin.

       Because there is no quadratic term the result is always invertible with one real root, and
       there is no mucking about with complex numbers or multivalued solutions.

       OPTIONS

       o,origin,Origin
          The origin of the pincushion. (default is the, er, origin).

       l,l0,length,Length,r0
          The fundamental scale of the transformation -- the radius that remains unchanged.
          (default=1)

       d, dim, dims, Dims
          The number of dimensions to treat (default is the dimensionality of your input vectors)

   t_quartic
         $t = t_quartic(<options>);

       Quartic scaling -- cylindrical pincushion (n-d; with inverse)

       Quartic scaling is a generalization of t_quadratic to a quartic expansion.  Only even
       powers of the input coordinates are retained, and (as with t_quadratic) sign is preserved,
       making it an odd function although a true quartic transformation would be an even
       function.

       You can apply separate distortion along any of the principal axes.  If you want different
       axes, use t_wrap and t_linear to rotate them to the correct angle.  The scaling options
       may be scalars or vectors; if they are scalars then the expansion is isotropic.

       The formula for the expansion is:

           f(a) = ( <a> + <strength> * a^2/<L_0> ) / (abs(<strength>) + 1)

       where <strength> is a scaling coefficient and <L_0> is a fundamental length scale.
       Negative values of <strength> result in a pincushion contraction.

       Note that, because quadratic scaling does not have a strict inverse for coordinate systems
       that cross the origin, we cheat slightly and use $x * abs($x)  rather than $x**2.  This
       does the Right thing for pincushion and barrel distortion, but means that t_quadratic does
       not behave exactly like t_cubic with a null cubic strength coefficient.

       OPTIONS

       o,origin,Origin
          The origin of the pincushion. (default is the, er, origin).

       l,l0,length,Length,r0
          The fundamental scale of the transformation -- the radius that remains unchanged.
          (default=1)

       s,str,strength,Strength
          The relative strength of the pincushion. (default = 0.1)

       honest (default=0)
          Sets whether this is a true quadratic coordinate transform.  The more common form is
          pincushion or cylindrical distortion, which switches branches of the square root at the
          origin (for symmetric expansion).  Setting honest to a non-false value forces true
          quadratic behavior, which is not mirror-symmetric about the origin.

       d, dim, dims, Dims
          The number of dimensions to quadratically scale (default is the dimensionality of your
          input vectors)

   t_spherical
           $t = t_spherical(<options>);

       Convert Cartesian to spherical coordinates.  (3-D; with inverse)

       Convert 3-D Cartesian to spherical (theta, phi, r) coordinates.  Theta is longitude,
       centered on 0, and phi is latitude, also centered on 0.  Unless you specify Euler angles,
       the pole points in the +Z direction and the prime meridian is in the +X direction.  The
       default is for theta and phi to be in radians; you can select degrees if you want them.

       Just as the t_radial 2-D transform acts like a 3-D cylindrical transform by ignoring third
       and higher dimensions, Spherical acts like a hypercylindrical transform in four (or
       higher) dimensions.  Also as with t_radial, you must manually specify the origin if you
       want to use more dimensions than 3.

       To deal with latitude & longitude on the surface of a sphere (rather than full 3-D
       coordinates), see t_unit_sphere.

       OPTIONS:

       o, origin, Origin [default (0,0,0)]
          This is the Cartesian origin of the spherical expansion.  Pass in a PDL or an array
          ref.

       e, euler, Euler [default (0,0,0)]
          This is a 3-vector containing Euler angles to change the angle of the pole and
          ordinate.  The first two numbers are the (theta, phi) angles of the pole in a (+Z,+X)
          spherical expansion, and the last is the angle that the new prime meridian makes with
          the meridian of a simply tilted sphere.  This is implemented by composing the output
          transform with a PDL::Transform::Linear object.

       u, unit, Unit (default radians)
          This option sets the angular unit to be used.  Acceptable values are
          "degrees","radians", or reasonable substrings thereof (e.g. "deg", and "rad", but "d"
          and "r" are deprecated).  Once genuine unit processing comes online (a la Math::Units)
          any angular unit should be OK.

   t_projective
           $t = t_projective(<options>);

       Projective transformation

       Projective transforms are simple quadratic, quasi-linear transformations.  They are the
       simplest transformation that can continuously warp an image plane so that four arbitrarily
       chosen points exactly map to four other arbitrarily chosen points.  They have the property
       that straight lines remain straight after transformation.

       You can specify your projective transformation directly in homogeneous coordinates, or (in
       2 dimensions only) as a set of four unique points that are mapped one to the other by the
       transformation.

       Projective transforms are quasi-linear because they are most easily described as a linear
       transformation in homogeneous coordinates (e.g. (x',y',w) where w is a normalization
       factor: x = x'/w, etc.).  In those coordinates, an N-D projective transformation is
       represented as simple multiplication of an N+1-vector by an N+1 x N+1 matrix, whose lower-
       right corner value is 1.

       If the bottom row of the matrix consists of all zeroes, then the transformation reduces to
       a linear affine transformation (as in t_linear).

       If the bottom row of the matrix contains nonzero elements, then the transformed x,y,z,etc.
       coordinates are related to the original coordinates by a quadratic polynomial, because the
       normalization factor 'w' allows a second factor of x,y, and/or z to enter the equations.

       OPTIONS:

       m, mat, matrix, Matrix
          If specified, this is the homogeneous-coordinate matrix to use.  It must be N+1 x N+1,
          for an N-dimensional transformation.

       p, point, points, Points
          If specified, this is the set of four points that should be mapped one to the other.
          The homogeneous-coordinate matrix is calculated from them.  You should feed in a 2x2x4
          PDL, where the 0 dimension runs over coordinate, the 1 dimension runs between input and
          output, and the 2 dimension runs over point.  For example, specifying

            p=> pdl([ [[0,1],[0,1]], [[5,9],[5,8]], [[9,4],[9,3]], [[0,0],[0,0]] ])

          maps the origin and the point (0,1) to themselves, the point (5,9) to (5,8), and the
          point (9,4) to (9,3).

          This is similar to the behavior of fitwarp2d with a quadratic polynomial.

AUTHOR

       Copyright 2002, 2003 Craig DeForest.  There is no warranty.  You are allowed to
       redistribute this software under certain conditions.  For details, see the file COPYING in
       the PDL distribution.  If this file is separated from the PDL distribution, the copyright
       notice should be included in the file.