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/* */
/* Copyright 1998-2002 by Ullrich Koethe */
/* */
/* This file is part of the VIGRA computer vision library. */
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/************************************************************************/
#ifndef VIGRA_CONVOLUTION_HXX
#define VIGRA_CONVOLUTION_HXX
#include <functional>
#include "stdconvolution.hxx"
#include "separableconvolution.hxx"
#include "recursiveconvolution.hxx"
#include "nonlineardiffusion.hxx"
#include "combineimages.hxx"
/** \page Convolution Functions to Convolve Images and Signals
1D and 2D filters, including separable and recursive convolution, and non-linear diffusion
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\><br>
Namespace: vigra
<UL style="list-style-image:url(documents/bullet.gif)">
<LI> \ref CommonConvolutionFilters
<BR> <em>Short-hands for the most common 2D convolution filters</em>
<LI> \ref MultiArrayConvolutionFilters
<BR> <em>Convolution filters for arbitrary dimensional arrays (MultiArray etc.)</em>
<LI> \ref ResamplingConvolutionFilters
<BR> <em>Resampling convolution filters</em>
<LI> \ref StandardConvolution
<BR> <em>2D non-separable convolution, with and without ROI mask </em>
<LI> \ref vigra::Kernel2D
<BR> <em>Generic 2-dimensional discrete convolution kernel </em>
<LI> \ref SeparableConvolution
<BR> <em>1D convolution and separable filters in 2 dimensions </em>
<LI> \ref vigra::Kernel1D
<BR> <em>Generic 1-dimensional discrete convolution kernel </em>
<LI> \ref RecursiveConvolution
<BR> <em>Recursive filters (1st and 2nd order)</em>
<LI> \ref NonLinearDiffusion
<BR> <em>Edge-preserving smoothing </em>
<LI> \ref BorderTreatmentMode
<BR> <em>Choose between different border treatment modes </em>
<LI> \ref KernelArgumentObjectFactories
<BR> <em>Factory functions to create argument objects to simplify passing kernels</em>
</UL>
*/
/** \page KernelArgumentObjectFactories Kernel Argument Object Factories
These factory functions allow to create argument objects for 1D
and 2D convolution kernel analogously to
\ref ArgumentObjectFactories for images.
\section Kernel1dFactory kernel1d()
Pass a \ref vigra::Kernel1D to a 1D or separable convolution algorithm.
These factories can be used to create argument objects when we
are given instances or subclasses of \ref vigra::Kernel1D
(analogous to the \ref ArgumentObjectFactories for images).
These factory functions access <TT>kernel.center()</TT>,
<TT>kernel.left()</TT>, <TT>kernel.right()</TT>, <TT>kernel.accessor()</TT>,
and <TT>kernel.borderTreatment()</TT> to obtain the necessary
information. The following factory functions are provided:
<table>
<tr><th bgcolor="#f0e0c0" colspan=2 align=left>
<TT>\ref vigra::Kernel1D "vigra::Kernel1D<SomeType>" kernel;</TT>
</th>
</tr>
<tr><td>
<TT>kernel1d(kernel)</TT>
</td><td>
create argument object from information provided by
kernel
</td></tr>
<tr><td>
<TT>kernel1d(kernel, vigra::BORDER_TREATMENT_CLIP)</TT>
</td><td>
create argument object from information provided by
kernel, but use given border treatment mode
</td></tr>
<tr><td>
<TT>kernel1d(kerneliterator, kernelaccessor,</TT><br>
<TT> kernelleft, kernelright,</TT><br>
<TT> vigra::BORDER_TREATMENT_CLIP)</TT>
</td><td>
create argument object from explicitly given iterator
(pointing to the center of th kernel), accessor,
left and right boundaries, and border treatment mode
</table>
For usage examples see
\ref SeparableConvolution "one-dimensional and separable convolution functions".
\section Kernel2dFactory kernel2d()
Pass a \ref vigra::Kernel2D to a 2D (non-separable) convolution algorithm.
These factories can be used to create argument objects when we
are given instances or subclasses of \ref vigra::Kernel2D
(analogous to the \ref ArgumentObjectFactories for images).
These factory functions access <TT>kernel.center()</TT>,
<TT>kernel.upperLeft()</TT>, <TT>kernel.lowerRight()</TT>, <TT>kernel.accessor()</TT>,
and <TT>kernel.borderTreatment()</TT> to obtain the necessary
information. The following factory functions are provided:
<table>
<tr><th bgcolor="#f0e0c0" colspan=2 align=left>
<TT>\ref vigra::Kernel2D "vigra::Kernel2D<SomeType>" kernel;</TT>
</th>
</tr>
<tr><td>
<TT>kernel2d(kernel)</TT>
</td><td>
create argument object from information provided by
kernel
</td></tr>
<tr><td>
<TT>kernel2d(kernel, vigra::BORDER_TREATMENT_CLIP)</TT>
</td><td>
create argument object from information provided by
kernel, but use given border treatment mode
</td></tr>
<tr><td>
<TT>kernel2d(kerneliterator, kernelaccessor,</TT>
<TT> upperleft, lowerright,</TT>
<TT> vigra::BORDER_TREATMENT_CLIP)</TT>
</td><td>
create argument object from explicitly given iterator
(pointing to the center of th kernel), accessor,
upper left and lower right corners, and border treatment mode
</table>
For usage examples see \ref StandardConvolution "two-dimensional convolution functions".
*/
namespace vigra {
/********************************************************/
/* */
/* Common convolution filters */
/* */
/********************************************************/
/** \addtogroup CommonConvolutionFilters Common Filters
These functions calculate common filters by appropriate sequences of calls
to \ref separableConvolveX() and \ref separableConvolveY().
*/
//@{
/********************************************************/
/* */
/* convolveImage */
/* */
/********************************************************/
/** \brief Apply two separable filters successively, the first in x-direction,
the second in y-direction.
This function is a shorthand for the concatenation of a call to
\ref separableConvolveX() and \ref separableConvolveY()
with the given kernels.
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor,
class T>
void convolveImage(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
Kernel1D<T> const & kx, Kernel1D<T> const & ky);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor,
class T>
inline void
convolveImage(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
Kernel1D<T> const & kx, Kernel1D<T> const & ky);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), dest(w,h);
...
// implement sobel filter in x-direction
Kernel1D<double> kx, ky;
kx.initSymmetricGradient();
ky.initBinomial(1);
vigra::convolveImage(srcImageRange(src), destImage(dest), kx, ky);
\endcode
*/
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor,
class T>
void convolveImage(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
Kernel1D<T> const & kx, Kernel1D<T> const & ky)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::RealPromote
TmpType;
BasicImage<TmpType> tmp(slowerright - supperleft, SkipInitialization);
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(kx));
separableConvolveY(srcImageRange(tmp),
destIter(dupperleft, da), kernel1d(ky));
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor,
class T>
inline void
convolveImage(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
Kernel1D<T> const & kx, Kernel1D<T> const & ky)
{
convolveImage(src.first, src.second, src.third,
dest.first, dest.second, kx, ky);
}
/********************************************************/
/* */
/* simpleSharpening */
/* */
/********************************************************/
/** \brief Perform simple sharpening function.
This function uses \ref convolveImage() with the following filter:
\code
-sharpening_factor/16.0, -sharpening_factor/8.0, -sharpening_factor/16.0,
-sharpening_factor/8.0, 1.0+sharpening_factor*0.75, -sharpening_factor/8.0,
-sharpening_factor/16.0, -sharpening_factor/8.0, -sharpening_factor/16.0;
\endcode
and uses <TT>BORDER_TREATMENT_REFLECT</TT> as border treatment mode.
<b> Preconditions:</b>
\code
1. sharpening_factor >= 0
2. scale >= 0
\endcode
<b> Declarations:</b>
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void simpleSharpening(SrcIterator src_ul, SrcIterator src_lr, SrcAccessor src_acc,
DestIterator dest_ul, DestAccessor dest_acc, double sharpening_factor)
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline
void simpleSharpening(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest, double sharpening_factor)
{
simpleSharpening(src.first, src.second, src.third,
dest.first, dest.second, sharpening_factor);
}
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), dest(w,h);
...
// sharpening with sharpening_factor = 0.1
vigra::simpleSharpening(srcImageRange(src), destImage(dest), 0.1);
\endcode
*/
doxygen_overloaded_function(template <...> void simpleSharpening)
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void simpleSharpening(SrcIterator src_ul, SrcIterator src_lr, SrcAccessor src_acc,
DestIterator dest_ul, DestAccessor dest_acc, double sharpening_factor)
{
vigra_precondition(sharpening_factor >= 0.0,
"simpleSharpening(): amount of sharpening must be >= 0.");
Kernel2D<double> kernel;
kernel.initExplicitly(Diff2D(-1,-1), Diff2D(1,1)) = -sharpening_factor/16.0, -sharpening_factor/8.0, -sharpening_factor/16.0,
-sharpening_factor/8.0, 1.0+sharpening_factor*0.75, -sharpening_factor/8.0,
-sharpening_factor/16.0, -sharpening_factor/8.0, -sharpening_factor/16.0;
convolveImage(src_ul, src_lr, src_acc, dest_ul, dest_acc,
kernel.center(), kernel.accessor(),
kernel.upperLeft(), kernel.lowerRight() , BORDER_TREATMENT_REFLECT );
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline
void simpleSharpening(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest, double sharpening_factor)
{
simpleSharpening(src.first, src.second, src.third,
dest.first, dest.second, sharpening_factor);
}
/********************************************************/
/* */
/* gaussianSharpening */
/* */
/********************************************************/
/** \brief Perform sharpening function with gaussian filter.
This function uses \ref gaussianSmoothing() at the given scale to create a
temporary image 'smooth' and than blends the original and smoothed image
according to the formula
\code
dest = (1 + sharpening_factor)*src - sharpening_factor*smooth
\endcode
<b> Preconditions:</b>
\code
1. sharpening_factor >= 0
2. scale >= 0
\endcode
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianSharpening(SrcIterator src_ul, SrcIterator src_lr, SrcAccessor src_acc,
DestIterator dest_ul, DestAccessor dest_acc,
double sharpening_factor, double scale)
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianSharpening(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double sharpening_factor, double scale)
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), dest(w,h);
...
// sharpening with sharpening_factor = 3.0
// smoothing with scale = 0.5
vigra::gaussianSmoothing(srcImageRange(src), destImage(dest), 3.0, 0.5);
\endcode
*/
doxygen_overloaded_function(template <...> void gaussianSharpening)
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianSharpening(SrcIterator src_ul, SrcIterator src_lr, SrcAccessor src_acc,
DestIterator dest_ul, DestAccessor dest_acc, double sharpening_factor,
double scale)
{
vigra_precondition(sharpening_factor >= 0.0,
"gaussianSharpening(): amount of sharpening must be >= 0");
vigra_precondition(scale >= 0.0,
"gaussianSharpening(): scale parameter should be >= 0.");
typedef typename NumericTraits<typename SrcAccessor::value_type>::RealPromote ValueType;
BasicImage<ValueType> tmp(src_lr - src_ul, SkipInitialization);
gaussianSmoothing(src_ul, src_lr, src_acc, tmp.upperLeft(), tmp.accessor(), scale);
SrcIterator i_src = src_ul;
DestIterator i_dest = dest_ul;
typename BasicImage<ValueType>::traverser tmp_ul = tmp.upperLeft();
typename BasicImage<ValueType>::traverser i_tmp = tmp_ul;
typename BasicImage<ValueType>::Accessor tmp_acc = tmp.accessor();
for(; i_src.y != src_lr.y ; i_src.y++, i_dest.y++, i_tmp.y++ )
{
for (;i_src.x != src_lr.x ; i_src.x++, i_dest.x++, i_tmp.x++ )
{
dest_acc.set((1.0 + sharpening_factor)*src_acc(i_src) - sharpening_factor*tmp_acc(i_tmp), i_dest);
}
i_src.x = src_ul.x;
i_dest.x = dest_ul.x;
i_tmp.x = tmp_ul.x;
}
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianSharpening(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest, double sharpening_factor,
double scale)
{
gaussianSharpening(src.first, src.second, src.third,
dest.first, dest.second,
sharpening_factor, scale);
}
/********************************************************/
/* */
/* gaussianSmoothing */
/* */
/********************************************************/
/** \brief Perform isotropic Gaussian convolution.
This function is a shorthand for the concatenation of a call to
\ref separableConvolveX() and \ref separableConvolveY() with a
Gaussian kernel of the given scale. If two scales are provided,
smoothing in x and y direction will have different strength.
The function uses <TT>BORDER_TREATMENT_REFLECT</TT>.
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianSmoothing(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
double scale_x, double scale_y = scale_x);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
gaussianSmoothing(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale_x, double scale_y = scale_x);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), dest(w,h);
...
// smooth with scale = 3.0
vigra::gaussianSmoothing(srcImageRange(src), destImage(dest), 3.0);
\endcode
*/
doxygen_overloaded_function(template <...> void gaussianSmoothing)
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void
gaussianSmoothing(SrcIterator supperleft, SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
double scale_x, double scale_y)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::RealPromote
TmpType;
BasicImage<TmpType> tmp(slowerright - supperleft, SkipInitialization);
Kernel1D<double> smooth_x, smooth_y;
smooth_x.initGaussian(scale_x);
smooth_x.setBorderTreatment(BORDER_TREATMENT_REFLECT);
smooth_y.initGaussian(scale_y);
smooth_y.setBorderTreatment(BORDER_TREATMENT_REFLECT);
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(smooth_x));
separableConvolveY(srcImageRange(tmp),
destIter(dupperleft, da), kernel1d(smooth_y));
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
gaussianSmoothing(SrcIterator supperleft, SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
double scale)
{
gaussianSmoothing(supperleft, slowerright, sa,
dupperleft, da,
scale, scale);
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
gaussianSmoothing(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale_x, double scale_y)
{
gaussianSmoothing(src.first, src.second, src.third,
dest.first, dest.second, scale_x, scale_y);
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
gaussianSmoothing(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale)
{
gaussianSmoothing(src.first, src.second, src.third,
dest.first, dest.second, scale, scale);
}
/********************************************************/
/* */
/* gaussianGradient */
/* */
/********************************************************/
/** \brief Calculate the gradient vector by means of a 1st derivatives of
Gaussian filter.
This function is a shorthand for the concatenation of a call to
\ref separableConvolveX() and \ref separableConvolveY() with the
appropriate kernels at the given scale. Note that this function can either produce
two separate result images for the x- and y-components of the gradient, or write
into a vector valued image (with at least two components).
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
// write x and y component of the gradient into separate images
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorY, class DestAccessorY>
void gaussianGradient(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIteratorX dupperleftx, DestAccessorX dax,
DestIteratorY dupperlefty, DestAccessorY day,
double scale);
// write x and y component of the gradient into a vector-valued image
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianGradient(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double scale);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
// write x and y component of the gradient into separate images
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorY, class DestAccessorY>
void
gaussianGradient(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIteratorX, DestAccessorX> destx,
pair<DestIteratorY, DestAccessorY> desty,
double scale);
// write x and y component of the gradient into a vector-valued image
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void
gaussianGradient(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), gradx(w,h), grady(w,h);
...
// calculate gradient vector at scale = 3.0
vigra::gaussianGradient(srcImageRange(src),
destImage(gradx), destImage(grady), 3.0);
\endcode
*/
doxygen_overloaded_function(template <...> void gaussianGradient)
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorY, class DestAccessorY>
void gaussianGradient(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIteratorX dupperleftx, DestAccessorX dax,
DestIteratorY dupperlefty, DestAccessorY day,
double scale)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::RealPromote
TmpType;
BasicImage<TmpType> tmp(slowerright - supperleft, SkipInitialization);
Kernel1D<double> smooth, grad;
smooth.initGaussian(scale);
grad.initGaussianDerivative(scale, 1);
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(grad));
separableConvolveY(srcImageRange(tmp),
destIter(dupperleftx, dax), kernel1d(smooth));
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(smooth));
separableConvolveY(srcImageRange(tmp),
destIter(dupperlefty, day), kernel1d(grad));
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianGradient(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double scale)
{
VectorElementAccessor<DestAccessor> gradx(0, dest), grady(1, dest);
gaussianGradient(supperleft, slowerright, src,
dupperleft, gradx, dupperleft, grady, scale);
}
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorY, class DestAccessorY>
inline void
gaussianGradient(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIteratorX, DestAccessorX> destx,
pair<DestIteratorY, DestAccessorY> desty,
double scale)
{
gaussianGradient(src.first, src.second, src.third,
destx.first, destx.second, desty.first, desty.second, scale);
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
gaussianGradient(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale)
{
gaussianGradient(src.first, src.second, src.third,
dest.first, dest.second, scale);
}
/** \brief Calculate the gradient magnitude by means of a 1st derivatives of
Gaussian filter.
This function calls gaussianGradient() and returns the pixel-wise magnitude of
the resulting gradient vectors. If the original image has multiple bands,
the squared gradient magnitude is computed for each band separately, and the
return value is the square root of the sum of these sqaured magnitudes.
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianGradientMagnitude(SrcIterator sul,
SrcIterator slr, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double scale);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void
gaussianGradientMagnitude(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), grad(w,h);
...
// calculate gradient magnitude at scale = 3.0
vigra::gaussianGradientMagnitude(srcImageRange(src), destImage(grad), 3.0);
\endcode
*/
doxygen_overloaded_function(template <...> void gaussianGradientMagnitude)
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void gaussianGradientMagnitude(SrcIterator sul,
SrcIterator slr, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double scale)
{
typedef typename NumericTraits<typename SrcAccessor::value_type>::RealPromote TmpType;
BasicImage<TmpType> gradx(slr-sul, SkipInitialization), grady(slr-sul, SkipInitialization);
gaussianGradient(srcIterRange(sul, slr, src),
destImage(gradx), destImage(grady), scale);
combineTwoImages(srcImageRange(gradx), srcImage(grady), destIter(dupperleft, dest),
MagnitudeFunctor<TmpType>());
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
gaussianGradientMagnitude(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale)
{
gaussianGradientMagnitude(src.first, src.second, src.third,
dest.first, dest.second, scale);
}
/********************************************************/
/* */
/* laplacianOfGaussian */
/* */
/********************************************************/
/** \brief Filter image with the Laplacian of Gaussian operator
at the given scale.
This function calls \ref separableConvolveX() and \ref separableConvolveY() with the appropriate 2nd derivative
of Gaussian kernels in x- and y-direction and then sums the results
to get the Laplacian.
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void laplacianOfGaussian(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
double scale);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
laplacianOfGaussian(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), dest(w,h);
...
// calculate Laplacian of Gaussian at scale = 3.0
vigra::laplacianOfGaussian(srcImageRange(src), destImage(dest), 3.0);
\endcode
*/
doxygen_overloaded_function(template <...> void laplacianOfGaussian)
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void laplacianOfGaussian(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
double scale)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::RealPromote
TmpType;
BasicImage<TmpType> tmp(slowerright - supperleft, SkipInitialization),
tmpx(slowerright - supperleft, SkipInitialization),
tmpy(slowerright - supperleft, SkipInitialization);
Kernel1D<double> smooth, deriv;
smooth.initGaussian(scale);
deriv.initGaussianDerivative(scale, 2);
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(deriv));
separableConvolveY(srcImageRange(tmp),
destImage(tmpx), kernel1d(smooth));
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(smooth));
separableConvolveY(srcImageRange(tmp),
destImage(tmpy), kernel1d(deriv));
combineTwoImages(srcImageRange(tmpx), srcImage(tmpy),
destIter(dupperleft, da), std::plus<TmpType>());
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
laplacianOfGaussian(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double scale)
{
laplacianOfGaussian(src.first, src.second, src.third,
dest.first, dest.second, scale);
}
/********************************************************/
/* */
/* hessianMatrixOfGaussian */
/* */
/********************************************************/
/** \brief Filter image with the 2nd derivatives of the Gaussian
at the given scale to get the Hessian matrix.
The Hessian matrix is a symmetric matrix defined as:
\f[
\mbox{\rm Hessian}(I) = \left(
\begin{array}{cc}
G_{xx} \ast I & G_{xy} \ast I \\
G_{xy} \ast I & G_{yy} \ast I
\end{array} \right)
\f]
where \f$G_{xx}, G_{xy}, G_{yy}\f$ denote 2nd derivatives of Gaussians
at the given scale, and
\f$\ast\f$ is the convolution symbol. This function calls
\ref separableConvolveX() and \ref separableConvolveY()
with the appropriate 2nd derivative
of Gaussian kernels and puts the results in
the three destination images. The first destination image will
contain the second derivative in x-direction, the second one the mixed
derivative, and the third one holds the derivative in y-direction.
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
void hessianMatrixOfGaussian(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIteratorX dupperleftx, DestAccessorX dax,
DestIteratorXY dupperleftxy, DestAccessorXY daxy,
DestIteratorY dupperlefty, DestAccessorY day,
double scale);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
inline void
hessianMatrixOfGaussian(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIteratorX, DestAccessorX> destx,
pair<DestIteratorXY, DestAccessorXY> destxy,
pair<DestIteratorY, DestAccessorY> desty,
double scale);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), hxx(w,h), hxy(w,h), hyy(w,h);
...
// calculate Hessian of Gaussian at scale = 3.0
vigra::hessianMatrixOfGaussian(srcImageRange(src),
destImage(hxx), destImage(hxy), destImage(hyy), 3.0);
\endcode
*/
doxygen_overloaded_function(template <...> void hessianMatrixOfGaussian)
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
void hessianMatrixOfGaussian(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIteratorX dupperleftx, DestAccessorX dax,
DestIteratorXY dupperleftxy, DestAccessorXY daxy,
DestIteratorY dupperlefty, DestAccessorY day,
double scale)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::RealPromote
TmpType;
BasicImage<TmpType> tmp(slowerright - supperleft, SkipInitialization);
Kernel1D<double> smooth, deriv1, deriv2;
smooth.initGaussian(scale);
deriv1.initGaussianDerivative(scale, 1);
deriv2.initGaussianDerivative(scale, 2);
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(deriv2));
separableConvolveY(srcImageRange(tmp),
destIter(dupperleftx, dax), kernel1d(smooth));
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(smooth));
separableConvolveY(srcImageRange(tmp),
destIter(dupperlefty, day), kernel1d(deriv2));
separableConvolveX(srcIterRange(supperleft, slowerright, sa),
destImage(tmp), kernel1d(deriv1));
separableConvolveY(srcImageRange(tmp),
destIter(dupperleftxy, daxy), kernel1d(deriv1));
}
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
inline void
hessianMatrixOfGaussian(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIteratorX, DestAccessorX> destx,
pair<DestIteratorXY, DestAccessorXY> destxy,
pair<DestIteratorY, DestAccessorY> desty,
double scale)
{
hessianMatrixOfGaussian(src.first, src.second, src.third,
destx.first, destx.second,
destxy.first, destxy.second,
desty.first, desty.second,
scale);
}
/********************************************************/
/* */
/* structureTensor */
/* */
/********************************************************/
/** \brief Calculate the Structure Tensor for each pixel of
and image, using Gaussian (derivative) filters.
The Structure Tensor is is a smoothed version of the Euclidean product
of the gradient vector with itself. I.e. it's a symmetric matrix defined as:
\f[
\mbox{\rm StructurTensor}(I) = \left(
\begin{array}{cc}
G \ast (I_x I_x) & G \ast (I_x I_y) \\
G \ast (I_x I_y) & G \ast (I_y I_y)
\end{array} \right) = \left(
\begin{array}{cc}
A & C \\
C & B
\end{array} \right)
\f]
where \f$G\f$ denotes Gaussian smoothing at the <i>outer scale</i>,
\f$I_x, I_y\f$ are the gradient components taken at the <i>inner scale</i>,
\f$\ast\f$ is the convolution symbol, and \f$I_x I_x\f$ etc. are pixelwise
products of the 1st derivative images. This function calls
\ref separableConvolveX() and \ref separableConvolveY() with the
appropriate Gaussian kernels and puts the results in
the three separate destination images (where the first one will
contain \f$G \ast (I_x I_x)\f$, the second one \f$G \ast (I_x I_y)\f$, and the
third one holds \f$G \ast (I_y I_y)\f$), or into a single 3-band image (where the bands
hold the result in the same order as above). The latter form is also applicable when
the source image is a multi-band image (e.g. RGB). In this case, tensors are
first computed for each band separately, and then summed up to get a single result tensor.
<b> Declarations:</b>
pass arguments explicitly:
\code
namespace vigra {
// create three separate destination images
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
void structureTensor(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIteratorX dupperleftx, DestAccessorX dax,
DestIteratorXY dupperleftxy, DestAccessorXY daxy,
DestIteratorY dupperlefty, DestAccessorY day,
double inner_scale, double outer_scale);
// create a single 3-band destination image
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void structureTensor(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIterator dupperleft, DestAccessor da,
double inner_scale, double outer_scale);
}
\endcode
use argument objects in conjunction with \ref ArgumentObjectFactories :
\code
namespace vigra {
// create three separate destination images
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
void
structureTensor(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIteratorX, DestAccessorX> destx,
pair<DestIteratorXY, DestAccessorXY> destxy,
pair<DestIteratorY, DestAccessorY> desty,
double nner_scale, double outer_scale);
// create a single 3-band destination image
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void
structureTensor(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double nner_scale, double outer_scale);
}
\endcode
<b> Usage:</b>
<b>\#include</b> \<<a href="convolution_8hxx-source.html">vigra/convolution.hxx</a>\>
\code
vigra::FImage src(w,h), stxx(w,h), stxy(w,h), styy(w,h);
vigra::BasicImage<TinyVector<float, 3> > st(w,h);
...
// calculate Structure Tensor at inner scale = 1.0 and outer scale = 3.0
vigra::structureTensor(srcImageRange(src),
destImage(stxx), destImage(stxy), destImage(styy), 1.0, 3.0);
// dto. with a single 3-band destination image
vigra::structureTensor(srcImageRange(src), destImage(st), 1.0, 3.0);
\endcode
*/
doxygen_overloaded_function(template <...> void structureTensor)
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
void structureTensor(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor sa,
DestIteratorX dupperleftx, DestAccessorX dax,
DestIteratorXY dupperleftxy, DestAccessorXY daxy,
DestIteratorY dupperlefty, DestAccessorY day,
double inner_scale, double outer_scale)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::RealPromote
TmpType;
BasicImage<TmpType> tmp(slowerright - supperleft, SkipInitialization),
tmpx(slowerright - supperleft, SkipInitialization),
tmpy(slowerright - supperleft, SkipInitialization);
gaussianGradient(srcIterRange(supperleft, slowerright, sa),
destImage(tmpx), destImage(tmpy), inner_scale);
combineTwoImages(srcImageRange(tmpx), srcImage(tmpx),
destImage(tmp), std::multiplies<TmpType>());
gaussianSmoothing(srcImageRange(tmp),
destIter(dupperleftx, dax), outer_scale);
combineTwoImages(srcImageRange(tmpy), srcImage(tmpy),
destImage(tmp), std::multiplies<TmpType>());
gaussianSmoothing(srcImageRange(tmp),
destIter(dupperlefty, day), outer_scale);
combineTwoImages(srcImageRange(tmpx), srcImage(tmpy),
destImage(tmp), std::multiplies<TmpType>());
gaussianSmoothing(srcImageRange(tmp),
destIter(dupperleftxy, daxy), outer_scale);
}
template <class SrcIterator, class SrcAccessor,
class DestIteratorX, class DestAccessorX,
class DestIteratorXY, class DestAccessorXY,
class DestIteratorY, class DestAccessorY>
inline void
structureTensor(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIteratorX, DestAccessorX> destx,
pair<DestIteratorXY, DestAccessorXY> destxy,
pair<DestIteratorY, DestAccessorY> desty,
double inner_scale, double outer_scale)
{
structureTensor(src.first, src.second, src.third,
destx.first, destx.second,
destxy.first, destxy.second,
desty.first, desty.second,
inner_scale, outer_scale);
}
namespace detail {
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void structureTensor(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double inner_scale, double outer_scale,
VigraTrueType /* isScalar */)
{
typedef VectorElementAccessor<DestAccessor> DA;
structureTensor(supperleft, slowerright, src,
dupperleft, DA(0, dest),
dupperleft, DA(1, dest),
dupperleft, DA(2, dest),
inner_scale, outer_scale);
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void structureTensor(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double inner_scale, double outer_scale,
VigraFalseType /* isScalar */)
{
int bands = src.size(supperleft);
typedef VectorElementAccessor<SrcAccessor> SA;
structureTensor(supperleft, slowerright, SA(0, src),
dupperleft, dest,
inner_scale, outer_scale,
VigraTrueType() /* isScalar */);
BasicImage<typename DestAccessor::value_type> st(slowerright - supperleft, SkipInitialization);
for(int k=1; k < bands; ++k)
{
structureTensor(supperleft, slowerright, SA(k, src),
st.upperLeft(), st.accessor(),
inner_scale, outer_scale,
VigraTrueType() /* isScalar */);
combineTwoImages(srcImageRange(st), srcIter(dupperleft, dest), destIter(dupperleft, dest),
std::plus<typename DestAccessor::value_type>());
}
}
} // namespace detail
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
void structureTensor(SrcIterator supperleft,
SrcIterator slowerright, SrcAccessor src,
DestIterator dupperleft, DestAccessor dest,
double inner_scale, double outer_scale)
{
typedef typename
NumericTraits<typename SrcAccessor::value_type>::isScalar isScalar;
detail::structureTensor(supperleft, slowerright, src,
dupperleft, dest, inner_scale, outer_scale, isScalar());
}
template <class SrcIterator, class SrcAccessor,
class DestIterator, class DestAccessor>
inline void
structureTensor(triple<SrcIterator, SrcIterator, SrcAccessor> src,
pair<DestIterator, DestAccessor> dest,
double inner_scale, double outer_scale)
{
structureTensor(src.first, src.second, src.third,
dest.first, dest.second,
inner_scale, outer_scale);
}
//@}
} // namespace vigra
#endif // VIGRA_CONVOLUTION_HXX
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