ITK  5.2.0
Insight Toolkit
SphinxExamples/src/Core/Transform/GlobalRegistrationTwoImagesAffine/Code.cxx
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* Copyright NumFOCUS
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* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
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#include "itkImage.h"
constexpr unsigned int Dimension = 2;
using PixelType = unsigned char;
static void
CreateEllipseImage(ImageType::Pointer image);
static void
CreateSphereImage(ImageType::Pointer image);
int
main(int, char *[])
{
// The transform that will map the fixed image into the moving image.
// An optimizer is required to explore the parameter space of the transform
// in search of optimal values of the metric.
// The metric will compare how well the two images match each other. Metric
// types are usually parameterized by the image types as it can be seen in
// the following type declaration.
// Finally, the type of the interpolator is declared. The interpolator will
// evaluate the intensities of the moving image at non-grid positions.
// The registration method type is instantiated using the types of the
// fixed and moving images. This class is responsible for interconnecting
// all the components that we have described so far.
// Create components
MetricType::Pointer metric = MetricType::New();
TransformType::Pointer transform = TransformType::New();
OptimizerType::Pointer optimizer = OptimizerType::New();
InterpolatorType::Pointer interpolator = InterpolatorType::New();
RegistrationType::Pointer registration = RegistrationType::New();
// Each component is now connected to the instance of the registration method.
registration->SetMetric(metric);
registration->SetOptimizer(optimizer);
registration->SetTransform(transform);
registration->SetInterpolator(interpolator);
// Get the two images
ImageType::Pointer fixedImage = ImageType::New();
ImageType::Pointer movingImage = ImageType::New();
CreateSphereImage(fixedImage);
CreateEllipseImage(movingImage);
// Write the two synthetic inputs
using WriterType = itk::ImageFileWriter<ImageType>;
WriterType::Pointer fixedWriter = WriterType::New();
fixedWriter->SetFileName("fixed.png");
fixedWriter->SetInput(fixedImage);
fixedWriter->Update();
WriterType::Pointer movingWriter = WriterType::New();
movingWriter->SetFileName("moving.png");
movingWriter->SetInput(movingImage);
movingWriter->Update();
// Set the registration inputs
registration->SetFixedImage(fixedImage);
registration->SetMovingImage(movingImage);
registration->SetFixedImageRegion(fixedImage->GetLargestPossibleRegion());
// Initialize the transform
using ParametersType = RegistrationType::ParametersType;
ParametersType initialParameters(transform->GetNumberOfParameters());
// rotation matrix
initialParameters[0] = 1.0; // R(0,0)
initialParameters[1] = 0.0; // R(0,1)
initialParameters[2] = 0.0; // R(1,0)
initialParameters[3] = 1.0; // R(1,1)
// translation vector
initialParameters[4] = 0.0;
initialParameters[5] = 0.0;
registration->SetInitialTransformParameters(initialParameters);
optimizer->SetMaximumStepLength(.1); // If this is set too high, you will get a
//"itk::ERROR: MeanSquaresImageToImageMetric(0xa27ce70): Too many samples map outside moving image buffer: 1818 /
// 10000" error
optimizer->SetMinimumStepLength(0.01);
// Set a stopping criterion
optimizer->SetNumberOfIterations(200);
// Connect an observer
// CommandIterationUpdate::Pointer observer = CommandIterationUpdate::New();
// optimizer->AddObserver( itk::IterationEvent(), observer );
try
{
registration->Update();
}
catch (itk::ExceptionObject & err)
{
std::cerr << "ExceptionObject caught !" << std::endl;
std::cerr << err << std::endl;
return EXIT_FAILURE;
}
// The result of the registration process is an array of parameters that
// defines the spatial transformation in an unique way. This final result is
// obtained using the \code{GetLastTransformParameters()} method.
ParametersType finalParameters = registration->GetLastTransformParameters();
std::cout << "Final parameters: " << finalParameters << std::endl;
// The value of the image metric corresponding to the last set of parameters
// can be obtained with the \code{GetValue()} method of the optimizer.
const double bestValue = optimizer->GetValue();
// Print out results
//
std::cout << "Result = " << std::endl;
std::cout << " Metric value = " << bestValue << std::endl;
// It is common, as the last step of a registration task, to use the
// resulting transform to map the moving image into the fixed image space.
// This is easily done with the \doxygen{ResampleImageFilter}.
ResampleFilterType::Pointer resampler = ResampleFilterType::New();
resampler->SetInput(movingImage);
// The Transform that is produced as output of the Registration method is
// also passed as input to the resampling filter. Note the use of the
// methods \code{GetOutput()} and \code{Get()}. This combination is needed
// here because the registration method acts as a filter whose output is a
// transform decorated in the form of a \doxygen{DataObject}. For details in
// this construction you may want to read the documentation of the
// \doxygen{DataObjectDecorator}.
resampler->SetTransform(registration->GetOutput()->Get());
// As described in Section \ref{sec:ResampleImageFilter}, the
// ResampleImageFilter requires additional parameters to be specified, in
// particular, the spacing, origin and size of the output image. The default
// pixel value is also set to a distinct gray level in order to highlight
// the regions that are mapped outside of the moving image.
resampler->SetSize(fixedImage->GetLargestPossibleRegion().GetSize());
resampler->SetOutputOrigin(fixedImage->GetOrigin());
resampler->SetOutputSpacing(fixedImage->GetSpacing());
resampler->SetOutputDirection(fixedImage->GetDirection());
resampler->SetDefaultPixelValue(100);
// The output of the filter is passed to a writer that will store the
// image in a file. An \doxygen{CastImageFilter} is used to convert the
// pixel type of the resampled image to the final type used by the
// writer. The cast and writer filters are instantiated below.
WriterType::Pointer writer = WriterType::New();
CastFilterType::Pointer caster = CastFilterType::New();
writer->SetFileName("output.png");
caster->SetInput(resampler->GetOutput());
writer->SetInput(caster->GetOutput());
writer->Update();
return EXIT_SUCCESS;
}
void
CreateEllipseImage(ImageType::Pointer image)
{
using SpatialObjectToImageFilterType = itk::SpatialObjectToImageFilter<EllipseType, ImageType>;
SpatialObjectToImageFilterType::Pointer imageFilter = SpatialObjectToImageFilterType::New();
size[0] = 100;
size[1] = 100;
imageFilter->SetSize(size);
ImageType::SpacingType spacing;
spacing.Fill(1);
imageFilter->SetSpacing(spacing);
EllipseType::Pointer ellipse = EllipseType::New();
EllipseType::ArrayType radiusArray;
radiusArray[0] = 10;
radiusArray[1] = 20;
ellipse->SetRadiusInObjectSpace(radiusArray);
using TransformType = EllipseType::TransformType;
TransformType::Pointer transform = TransformType::New();
transform->SetIdentity();
TransformType::OutputVectorType translation;
translation[0] = 65;
translation[1] = 45;
transform->Translate(translation, false);
ellipse->SetObjectToParentTransform(transform);
imageFilter->SetInput(ellipse);
ellipse->SetDefaultInsideValue(255);
ellipse->SetDefaultOutsideValue(0);
imageFilter->SetUseObjectValue(true);
imageFilter->SetOutsideValue(0);
imageFilter->Update();
image->Graft(imageFilter->GetOutput());
}
void
CreateSphereImage(ImageType::Pointer image)
{
using SpatialObjectToImageFilterType = itk::SpatialObjectToImageFilter<EllipseType, ImageType>;
SpatialObjectToImageFilterType::Pointer imageFilter = SpatialObjectToImageFilterType::New();
size[0] = 100;
size[1] = 100;
imageFilter->SetSize(size);
ImageType::SpacingType spacing;
spacing.Fill(1);
imageFilter->SetSpacing(spacing);
EllipseType::Pointer ellipse = EllipseType::New();
EllipseType::ArrayType radiusArray;
radiusArray[0] = 10;
radiusArray[1] = 10;
ellipse->SetRadiusInObjectSpace(radiusArray);
using TransformType = EllipseType::TransformType;
TransformType::Pointer transform = TransformType::New();
transform->SetIdentity();
TransformType::OutputVectorType translation;
translation[0] = 50;
translation[1] = 50;
transform->Translate(translation, false);
ellipse->SetObjectToParentTransform(transform);
imageFilter->SetInput(ellipse);
ellipse->SetDefaultInsideValue(255);
ellipse->SetDefaultOutsideValue(0);
imageFilter->SetUseObjectValue(true);
imageFilter->SetOutsideValue(0);
imageFilter->Update();
image->Graft(imageFilter->GetOutput());
}
itk::CastImageFilter
Casts input pixels to output pixel type.
Definition: itkCastImageFilter.h:104
itkLinearInterpolateImageFunction.h
itkEllipseSpatialObject.h
itkRegularStepGradientDescentOptimizer.h
itkImageFileReader.h
itk::GTest::TypedefsAndConstructors::Dimension2::SizeType
ImageBaseType::SizeType SizeType
Definition: itkGTestTypedefsAndConstructors.h:49
itkImage.h
itk::ImageRegistrationMethod
Base class for Image Registration Methods.
Definition: itkImageRegistrationMethod.h:70
itk::SpatialObjectToImageFilter
Base class for filters that take a SpatialObject as input and produce an image as output....
Definition: itkSpatialObjectToImageFilter.h:41
itkCastImageFilter.h
itkAffineTransform.h
itk::AffineTransform
Definition: itkAffineTransform.h:101
itk::EllipseSpatialObject
Definition: itkEllipseSpatialObject.h:38
itk::RegularStepGradientDescentOptimizer
Implement a gradient descent optimizer.
Definition: itkRegularStepGradientDescentOptimizer.h:33
itkMeanSquaresImageToImageMetric.h
itk::LinearInterpolateImageFunction
Linearly interpolate an image at specified positions.
Definition: itkLinearInterpolateImageFunction.h:50
itk::ImageFileWriter
Writes image data to a single file.
Definition: itkImageFileWriter.h:88
itkSpatialObjectToImageFilter.h
itkImageRegistrationMethod.h
itkRescaleIntensityImageFilter.h
itk::MeanSquaresImageToImageMetric
TODO.
Definition: itkMeanSquaresImageToImageMetric.h:39
itkImageFileWriter.h
itk::Size::SetSize
void SetSize(const SizeValueType val[VDimension])
Definition: itkSize.h:179
itk::ResampleImageFilter
Resample an image via a coordinate transform.
Definition: itkResampleImageFilter.h:90
itk::Image
Templated n-dimensional image class.
Definition: itkImage.h:86
itkResampleImageFilter.h
itk::GTest::TypedefsAndConstructors::Dimension2::Dimension
constexpr unsigned int Dimension
Definition: itkGTestTypedefsAndConstructors.h:44