File: itkBinaryImageToStatisticsLabelMapFilter.txx

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/*=========================================================================

  Program:   Insight Segmentation & Registration Toolkit
  Module:    itkBinaryImageToStatisticsLabelMapFilter.txx
  Language:  C++
  Date:      $Date$
  Version:   $Revision$

  Copyright (c) Insight Software Consortium. All rights reserved.
  See ITKCopyright.txt or http://www.itk.org/HTML/Copyright.htm for details.

     This software is distributed WITHOUT ANY WARRANTY; without even 
     the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR 
     PURPOSE.  See the above copyright notices for more information.

=========================================================================*/
#ifndef __itkBinaryImageToStatisticsLabelMapFilter_txx
#define __itkBinaryImageToStatisticsLabelMapFilter_txx

#include "itkBinaryImageToStatisticsLabelMapFilter.h"
#include "itkProgressAccumulator.h"


namespace itk {

template<class TInputImage, class TFeatureImage, class TOutputImage>
BinaryImageToStatisticsLabelMapFilter<TInputImage, TFeatureImage, TOutputImage>
::BinaryImageToStatisticsLabelMapFilter()
{
  m_OutputBackgroundValue = NumericTraits<OutputImagePixelType>::NonpositiveMin();
  m_InputForegroundValue = NumericTraits<OutputImagePixelType>::max();
  m_FullyConnected = false;
  m_ComputeFeretDiameter = false;
  m_ComputePerimeter = false;
  m_NumberOfBins = 128;
  m_ComputeHistogram = true;
  this->SetNumberOfRequiredInputs(2);
}

template<class TInputImage, class TFeatureImage, class TOutputImage>
void 
BinaryImageToStatisticsLabelMapFilter<TInputImage, TFeatureImage, TOutputImage>
::GenerateInputRequestedRegion()
{
  // call the superclass' implementation of this method
  Superclass::GenerateInputRequestedRegion();
  
  // We need all the input.
  InputImagePointer input = const_cast<InputImageType *>(this->GetInput());
  if( input )
    {
    input->SetRequestedRegion( input->GetLargestPossibleRegion() );
    }
}


template<class TInputImage, class TFeatureImage, class TOutputImage>
void 
BinaryImageToStatisticsLabelMapFilter<TInputImage, TFeatureImage, TOutputImage>
::EnlargeOutputRequestedRegion(DataObject *)
{
  this->GetOutput()
    ->SetRequestedRegion( this->GetOutput()->GetLargestPossibleRegion() );
}


template<class TInputImage, class TFeatureImage, class TOutputImage>
void
BinaryImageToStatisticsLabelMapFilter<TInputImage, TFeatureImage, TOutputImage>
::GenerateData()
{
  // Create a process accumulator for tracking the progress of this minipipeline
  ProgressAccumulator::Pointer progress = ProgressAccumulator::New();
  progress->SetMiniPipelineFilter(this);

  // Allocate the output
  this->AllocateOutputs();
  
  typename LabelizerType::Pointer labelizer = LabelizerType::New();
  labelizer->SetInput( this->GetInput() );
  labelizer->SetInputForegroundValue( m_InputForegroundValue );
  labelizer->SetOutputBackgroundValue( m_OutputBackgroundValue );
  labelizer->SetFullyConnected( m_FullyConnected );
  labelizer->SetNumberOfThreads( this->GetNumberOfThreads() );
  progress->RegisterInternalFilter(labelizer, .5f);
  
  typename LabelObjectValuatorType::Pointer valuator = LabelObjectValuatorType::New();
  valuator->SetInput( labelizer->GetOutput() );
  valuator->SetFeatureImage( this->GetFeatureImage() );
  valuator->SetNumberOfThreads( this->GetNumberOfThreads() );
  valuator->SetComputePerimeter( m_ComputePerimeter );
  valuator->SetComputeFeretDiameter( m_ComputeFeretDiameter );
  valuator->SetComputeHistogram( m_ComputeHistogram );
  valuator->SetNumberOfBins( m_NumberOfBins );
  progress->RegisterInternalFilter(valuator, .5f);

  valuator->GraftOutput( this->GetOutput() );
  valuator->Update();
  this->GraftOutput( valuator->GetOutput() );
}


template<class TInputImage, class TFeatureImage, class TOutputImage>
void
BinaryImageToStatisticsLabelMapFilter<TInputImage, TFeatureImage, TOutputImage>
::PrintSelf(std::ostream &os, Indent indent) const
{
  Superclass::PrintSelf(os, indent);

  os << indent << "FullyConnected: "  << m_FullyConnected << std::endl;
  os << indent << "OutputBackgroundValue: "  << static_cast<typename NumericTraits<OutputImagePixelType>::PrintType>(m_OutputBackgroundValue) << std::endl;
  os << indent << "InputForegroundValue: "  << static_cast<typename NumericTraits<OutputImagePixelType>::PrintType>(m_InputForegroundValue) << std::endl;
  os << indent << "ComputeFeretDiameter: " << m_ComputeFeretDiameter << std::endl;
  os << indent << "ComputePerimeter: " << m_ComputePerimeter << std::endl;
  os << indent << "ComputeHistogram: " << m_ComputeHistogram << std::endl;
  os << indent << "NumberOfBins: " << m_NumberOfBins << std::endl;
}
  
}// end namespace itk
#endif