{
public:
using Self = CommandIterationUpdate;
protected:
CommandIterationUpdate() = default;
public:
using OptimizerPointer = const OptimizerType *;
void
{
}
void
{
auto optimizer = static_cast<OptimizerPointer>(object);
if (!(itk::IterationEvent().CheckEvent(&event)))
{
return;
}
std::cout << optimizer->GetCurrentIteration() << " ";
std::cout << optimizer->GetCurrentMetricValue() << " ";
std::cout << optimizer->GetInfinityNormOfProjectedGradient() << std::endl;
}
};
int
main(int argc, char * argv[])
{
if (argc < 4)
{
std::cerr << "Missing Parameters " << std::endl;
std::cerr << "Usage: " << argv[0];
std::cerr << " fixedImageFile movingImageFile outputImagefile ";
std::cerr << " [differenceOutputfile] [differenceBeforeRegistration] ";
std::cerr << " [deformationField] ";
std::cerr << " [filenameForFinalTransformParameters] ";
std::cerr << " [numberOfGridNodesInOneDimension] ";
std::cerr << std::endl;
return EXIT_FAILURE;
}
constexpr unsigned int ImageDimension = 2;
using PixelType = float;
auto fixedImageReader = FixedImageReaderType::New();
fixedImageReader->SetFileName(argv[1]);
fixedImageReader->Update();
const FixedImageType::ConstPointer fixedImage =
fixedImageReader->GetOutput();
const FixedImageType::RegionType fixedRegion =
fixedImage->GetBufferedRegion();
auto movingImageReader = MovingImageReaderType::New();
movingImageReader->SetFileName(argv[2]);
movingImageReader->Update();
const MovingImageType::ConstPointer movingImage =
movingImageReader->GetOutput();
constexpr unsigned int SpaceDimension = ImageDimension;
constexpr unsigned int SplineOrder = 3;
using CoordinateRepType = double;
using TransformType =
using RegistrationType =
auto registration = RegistrationType::New();
auto transform = TransformType::New();
unsigned int numberOfGridNodesInOneDimension = 7;
if (argc > 8)
{
numberOfGridNodesInOneDimension = std::stoi(argv[8]);
}
TransformType::PhysicalDimensionsType fixedPhysicalDimensions;
TransformType::MeshSizeType meshSize;
TransformType::OriginType fixedOrigin;
for (unsigned int i = 0; i < SpaceDimension; ++i)
{
fixedOrigin[i] = fixedImage->GetOrigin()[i];
fixedPhysicalDimensions[i] =
fixedImage->GetSpacing()[i] *
static_cast<double>(
fixedImage->GetLargestPossibleRegion().GetSize()[i] - 1);
}
meshSize.Fill(numberOfGridNodesInOneDimension - SplineOrder);
transform->SetTransformDomainOrigin(fixedOrigin);
transform->SetTransformDomainPhysicalDimensions(fixedPhysicalDimensions);
transform->SetTransformDomainMeshSize(meshSize);
transform->SetTransformDomainDirection(fixedImage->GetDirection());
registration->SetInitialTransform(transform);
registration->InPlaceOn();
using ParametersType = TransformType::ParametersType;
const unsigned int numberOfParameters = transform->GetNumberOfParameters();
ParametersType parameters(numberOfParameters);
parameters.Fill(0.0);
transform->SetParameters(parameters);
using MetricType =
MovingImageType>;
auto metric = MetricType::New();
metric->SetNumberOfHistogramBins(32);
metric->SetUseMovingImageGradientFilter(false);
metric->SetUseFixedImageGradientFilter(false);
metric->SetUseSampledPointSet(false);
auto optimizer = OptimizerType::New();
const unsigned int numParameters = transform->GetNumberOfParameters();
OptimizerType::BoundSelectionType boundSelect(numParameters);
OptimizerType::BoundValueType upperBound(numParameters);
OptimizerType::BoundValueType lowerBound(numParameters);
boundSelect.Fill(0);
upperBound.Fill(0.0);
lowerBound.Fill(0.0);
optimizer->SetBoundSelection(boundSelect);
optimizer->SetUpperBound(upperBound);
optimizer->SetLowerBound(lowerBound);
optimizer->SetCostFunctionConvergenceFactor(1.e7);
optimizer->SetGradientConvergenceTolerance(1e-35);
optimizer->SetNumberOfIterations(200);
optimizer->SetMaximumNumberOfFunctionEvaluations(200);
optimizer->SetMaximumNumberOfCorrections(7);
auto observer = CommandIterationUpdate::New();
optimizer->AddObserver(itk::IterationEvent(), observer);
constexpr unsigned int numberOfLevels = 1;
RegistrationType::ShrinkFactorsArrayType shrinkFactorsPerLevel;
shrinkFactorsPerLevel.SetSize(1);
shrinkFactorsPerLevel[0] = 1;
RegistrationType::SmoothingSigmasArrayType smoothingSigmasPerLevel;
smoothingSigmasPerLevel.SetSize(1);
smoothingSigmasPerLevel[0] = 0;
registration->SetFixedImage(fixedImage);
registration->SetMovingImage(movingImage);
registration->SetMetric(metric);
registration->SetOptimizer(optimizer);
registration->SetNumberOfLevels(numberOfLevels);
registration->SetSmoothingSigmasPerLevel(smoothingSigmasPerLevel);
registration->SetShrinkFactorsPerLevel(shrinkFactorsPerLevel);
std::cout << std::endl << "Starting Registration" << std::endl;
try
{
memorymeter.
Start(
"Registration");
chronometer.
Start(
"Registration");
registration->Update();
chronometer.
Stop(
"Registration");
memorymeter.
Stop(
"Registration");
const OptimizerType::ConstPointer outputOptimizer =
dynamic_cast<const OptimizerType *>(registration->GetOptimizer());
if (outputOptimizer.IsNotNull())
{
std::cout << "Optimizer stop condition = "
<< outputOptimizer->GetStopConditionDescription()
<< std::endl;
}
else
{
std::cerr << "Output optimizer is null." << std::endl;
return EXIT_FAILURE;
}
}
{
std::cerr << "ExceptionObject caught !" << std::endl;
std::cerr << err << std::endl;
return EXIT_FAILURE;
}
const OptimizerType::ParametersType finalParameters =
transform->GetParameters();
chronometer.
Report(std::cout);
memorymeter.
Report(std::cout);
using ResampleFilterType =
auto resample = ResampleFilterType::New();
resample->SetTransform(transform);
resample->SetInput(movingImageReader->GetOutput());
resample->SetSize(fixedImage->GetLargestPossibleRegion().GetSize());
resample->SetOutputOrigin(fixedImage->GetOrigin());
resample->SetOutputSpacing(fixedImage->GetSpacing());
resample->SetOutputDirection(fixedImage->GetDirection());
resample->SetDefaultPixelValue(0);
using OutputPixelType = unsigned char;
using CastFilterType =
auto writer = WriterType::New();
auto caster = CastFilterType::New();
writer->SetFileName(argv[3]);
caster->SetInput(resample->GetOutput());
writer->SetInput(caster->GetOutput());
try
{
writer->Update();
}
{
std::cerr << "ExceptionObject caught !" << std::endl;
std::cerr << err << std::endl;
return EXIT_FAILURE;
}
using DifferenceFilterType =
FixedImageType,
OutputImageType>;
auto difference = DifferenceFilterType::New();
auto writer2 = WriterType::New();
writer2->SetInput(difference->GetOutput());
if (argc > 4)
{
difference->SetInput1(fixedImageReader->GetOutput());
difference->SetInput2(resample->GetOutput());
writer2->SetFileName(argv[4]);
try
{
writer2->Update();
}
{
std::cerr << "ExceptionObject caught !" << std::endl;
std::cerr << err << std::endl;
return EXIT_FAILURE;
}
}
if (argc > 5)
{
writer2->SetFileName(argv[5]);
difference->SetInput1(fixedImageReader->GetOutput());
difference->SetInput2(movingImageReader->GetOutput());
try
{
writer2->Update();
}
{
std::cerr << "ExceptionObject caught !" << std::endl;
std::cerr << err << std::endl;
return EXIT_FAILURE;
}
}
if (argc > 6)
{
auto field = DisplacementFieldType::New();
field->SetRegions(fixedRegion);
field->SetOrigin(fixedImage->GetOrigin());
field->SetSpacing(fixedImage->GetSpacing());
field->SetDirection(fixedImage->GetDirection());
field->Allocate();
FieldIterator fi(field, fixedRegion);
fi.GoToBegin();
TransformType::InputPointType fixedPoint;
TransformType::OutputPointType movingPoint;
DisplacementFieldType::IndexType index;
while (!fi.IsAtEnd())
{
index = fi.GetIndex();
field->TransformIndexToPhysicalPoint(index, fixedPoint);
movingPoint = transform->TransformPoint(fixedPoint);
displacement = movingPoint - fixedPoint;
fi.Set(displacement);
++fi;
}
auto fieldWriter = FieldWriterType::New();
fieldWriter->SetInput(field);
fieldWriter->SetFileName(argv[6]);
try
{
fieldWriter->Update();
}
{
std::cerr << "Exception thrown " << std::endl;
std::cerr << excp << std::endl;
return EXIT_FAILURE;
}
}
if (argc > 7)
{
std::ofstream parametersFile;
parametersFile.open(argv[7]);
parametersFile << finalParameters << std::endl;
parametersFile.close();
}
return EXIT_SUCCESS;
}
Casts input pixels to output pixel type.
Superclass for callback/observer methods.
virtual void Execute(Object *caller, const EventObject &event)=0
Abstraction of the Events used to communicating among filters and with GUIs.
Standard exception handling object.
Data source that reads image data from a single file.
Writes image data to a single file.
A multi-dimensional iterator templated over image type that walks a region of pixels.
Interface method for the current registration framework.
Templated n-dimensional image class.
Limited memory Broyden Fletcher Goldfarb Shannon minimization with simple bounds.
Aggregates a set of memory probes.
Base class for most ITK classes.
Resample an image via a coordinate transform.
virtual void Start(const char *id)
virtual void Report(std::ostream &os=std::cout, bool printSystemInfo=true, bool printReportHead=true, bool useTabs=false)
virtual void Stop(const char *id)
Implements transparent reference counting.
Implements pixel-wise the computation of squared difference.
Aggregates a set of time probes.
A templated class holding a n-Dimensional vector.
BinaryGeneratorImageFilter< TInputImage1, TInputImage2, TOutputImage > Superclass
SmartPointer< Self > Pointer
ImageBaseType::SpacingType VectorType