Package org.itk.simple
Class MaskedFFTNormalizedCorrelationImageFilter
java.lang.Object
org.itk.simple.ProcessObject
org.itk.simple.ImageFilter
org.itk.simple.MaskedFFTNormalizedCorrelationImageFilter
Calculate masked normalized cross correlation using FFTs.
This filter calculates the masked normalized cross correlation (NCC)
of two images under masks using FFTs instead of spatial correlation.
It is much faster than spatial correlation for reasonably large
structuring elements. This filter is not equivalent to simply masking
the images first and then correlating them; the latter approach yields
incorrect results because the zeros in the images still affect the
metric in the correlation process. This filter implements the masked
NCC correctly so that the masked-out regions are completely ignored.
The fundamental difference is described in detail in the references
below. If the masks are set to images of all ones, the result of this
filter is the same as standard NCC.
Inputs: Two images are required as inputs, fixedImage and movingImage,
and two are optional, fixedMask and movingMask. In the context of
correlation, inputs are often defined as: "image" and "template".
In this filter, the fixedImage plays the role of the image, and the
movingImage plays the role of the template. However, this filter is
capable of correlating any two images and is not restricted to small
movingImages (templates). In the fixedMask and movingMask, non-zero
positive values indicate locations of useful information in the
corresponding image, whereas zero and negative values indicate
locations that should be masked out (ignored). Internally, the masks
are converted to have values of only 0 and 1. For each optional mask
that is not set, the filter internally creates an image of ones, which
is equivalent to not masking the image. Thus, if both masks are not
set, the result will be equivalent to unmasked NCC. For example, if
only a mask for the fixed image is needed, the movingMask can either
not be set or can be set to an image of ones.
Optional parameters: The RequiredNumberOfOverlappingPixels enables the
user to specify the minimum number of voxels of the two masks that
must overlap; any location in the correlation map that results from
fewer than this number of voxels will be set to zero. Larger values
zero-out pixels on a larger border around the correlation image. Thus,
larger values remove less stable computations but also limit the
capture range. If RequiredNumberOfOverlappingPixels is set to 0, the
default, no zeroing will take place.
The RequiredFractionOfOverlappingPixels enables the user to specify a
fraction of the maximum number of overlapping pixels that need to
overlap; any location in the correlation map that results from fewer
than the product of this fraction and the internally computed maximum
number of overlapping pixels will be set to zero. The value ranges
between 0.0 and 1.0. This is very useful when the user does does not
know beforehand the maximum number of pixels of the masks that will
overlap. For example, when the masks have strange shapes, it is
difficult to predict how the correlation of the masks will interact
and what the maximum overlap will be. It is also useful when the mask
shapes or sizes change because it is relative to the internally
computed maximum of the overlap. Larger values zero-out pixels on a
larger border around the correlation image. Thus, larger values remove
less stable computations but also limit the capture range. Experiments
have shown that a value between 0.1 and 0.6 works well for images with
significant overlap and between 0.05 and 0.1 for images with little
overlap (such as in stitching applications). If
RequiredFractionOfOverlappingPixels is set to 0, the default, no
zeroing will take place.
The user can either specify RequiredNumberOfOverlappingPixels or
RequiredFractionOfOverlappingPixels (or both or none). Internally, the
number of required pixels resulting from both of these methods is
calculated and the one that gives the largest number of pixels is
chosen. Since these both default to 0, if a user only sets one, the
other is ignored.
Image size: fixedImage and movingImage need not be the same size, but
fixedMask must be the same size as fixedImage, and movingMask must be
the same size as movingImage. Furthermore, whereas some algorithms
require that the "template" be smaller than the "image" because of
errors in the regions where the two are not fully overlapping, this
filter has no such restriction.
Image spacing: Since the computations are done in the pixel domain, all
input images must have the same spacing.
Outputs; The output is an image of RealPixelType that is the masked
NCC of the two images and its values range from -1.0 to 1.0. The size
of this NCC image is, by definition, size(fixedImage) +
size(movingImage) - 1.
Example filter usage:
WARNING:
The pixel type of the output image must be of real type (float or
double). ConceptChecking is used to enforce the output pixel type. You
will get a compilation error if the pixel type of the output image is
not float or double.
References: 1) D. Padfield. "Masked object registration in the
Fourier domain." Transactions on Image Processing. 2) D. Padfield. "Masked FFT registration". In Proc.
Computer Vision and Pattern Recognition, 2010.
: Dirk Padfield, GE Global Research, padfield@research.ge.com
See:
itk::simple::MaskedFFTNormalizedCorrelation for the procedural interface
itk::MaskedFFTNormalizedCorrelationImageFilter for the Doxygen on the original ITK class.
C++ includes: sitkMaskedFFTNormalizedCorrelationImageFilter.h
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Field Summary
Fields inherited from class org.itk.simple.ProcessObject
swigCMemOwn
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Constructor Summary
ConstructorsModifierConstructorDescriptionitk::simple::MaskedFFTNormalizedCorrelationImageFilter::MaskedFFTNormalizedCorrelationImageFilter() Default Constructor that takes no arguments and initializes default parametersprotected
MaskedFFTNormalizedCorrelationImageFilter
(long cPtr, boolean cMemoryOwn) -
Method Summary
Modifier and TypeMethodDescriptionvoid
delete()
virtual itk::simple::MaskedFFTNormalizedCorrelationImageFilter::~MaskedFFTNormalizedCorrelationImageFilter() DestructorImage itk::simple::MaskedFFTNormalizedCorrelationImageFilter::Execute(const Image &fixedImage, const Image &movingImage, const Image &fixedImageMask, const Image &movingImageMask) Execute the filter on the input imageprotected void
finalize()
protected static long
getName()
std::string itk::simple::MaskedFFTNormalizedCorrelationImageFilter::GetName() const Name of this classfloat
float itk::simple::MaskedFFTNormalizedCorrelationImageFilter::GetRequiredFractionOfOverlappingPixels() const Set and get the required fraction of overlapping pixelslong
uint64_t itk::simple::MaskedFFTNormalizedCorrelationImageFilter::GetRequiredNumberOfOverlappingPixels() const Set and get the required number of overlapping pixelsvoid
setRequiredFractionOfOverlappingPixels
(float RequiredFractionOfOverlappingPixels) Self& itk::simple::MaskedFFTNormalizedCorrelationImageFilter::SetRequiredFractionOfOverlappingPixels(float RequiredFractionOfOverlappingPixels) Set and get the required fraction of overlapping pixelsvoid
setRequiredNumberOfOverlappingPixels
(long RequiredNumberOfOverlappingPixels) Self& itk::simple::MaskedFFTNormalizedCorrelationImageFilter::SetRequiredNumberOfOverlappingPixels(uint64_t RequiredNumberOfOverlappingPixels) Set and get the required number of overlapping pixelsprotected static long
toString()
std::string itk::simple::MaskedFFTNormalizedCorrelationImageFilter::ToString() const Print ourselves outMethods inherited from class org.itk.simple.ImageFilter
getCPtr, swigRelease
Methods inherited from class org.itk.simple.ProcessObject
abort, addCommand, debugOff, debugOn, getCPtr, getDebug, getGlobalDefaultCoordinateTolerance, getGlobalDefaultDebug, getGlobalDefaultDirectionTolerance, getGlobalDefaultNumberOfThreads, getGlobalDefaultThreader, getGlobalWarningDisplay, getNumberOfThreads, getNumberOfWorkUnits, getProgress, globalDefaultDebugOff, globalDefaultDebugOn, globalWarningDisplayOff, globalWarningDisplayOn, hasCommand, removeAllCommands, setDebug, setGlobalDefaultCoordinateTolerance, setGlobalDefaultDebug, setGlobalDefaultDirectionTolerance, setGlobalDefaultNumberOfThreads, setGlobalDefaultThreader, setGlobalWarningDisplay, setNumberOfThreads, setNumberOfWorkUnits, swigRelease
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Constructor Details
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MaskedFFTNormalizedCorrelationImageFilter
protected MaskedFFTNormalizedCorrelationImageFilter(long cPtr, boolean cMemoryOwn) -
MaskedFFTNormalizedCorrelationImageFilter
public MaskedFFTNormalizedCorrelationImageFilter()itk::simple::MaskedFFTNormalizedCorrelationImageFilter::MaskedFFTNormalizedCorrelationImageFilter() Default Constructor that takes no arguments and initializes default parameters
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Method Details
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getCPtr
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swigRelease
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finalize
protected void finalize()- Overrides:
finalize
in classImageFilter
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delete
public void delete()virtual itk::simple::MaskedFFTNormalizedCorrelationImageFilter::~MaskedFFTNormalizedCorrelationImageFilter() Destructor- Overrides:
delete
in classImageFilter
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setRequiredNumberOfOverlappingPixels
public void setRequiredNumberOfOverlappingPixels(long RequiredNumberOfOverlappingPixels) Self& itk::simple::MaskedFFTNormalizedCorrelationImageFilter::SetRequiredNumberOfOverlappingPixels(uint64_t RequiredNumberOfOverlappingPixels) Set and get the required number of overlapping pixels -
getRequiredNumberOfOverlappingPixels
public long getRequiredNumberOfOverlappingPixels()uint64_t itk::simple::MaskedFFTNormalizedCorrelationImageFilter::GetRequiredNumberOfOverlappingPixels() const Set and get the required number of overlapping pixels -
setRequiredFractionOfOverlappingPixels
public void setRequiredFractionOfOverlappingPixels(float RequiredFractionOfOverlappingPixels) Self& itk::simple::MaskedFFTNormalizedCorrelationImageFilter::SetRequiredFractionOfOverlappingPixels(float RequiredFractionOfOverlappingPixels) Set and get the required fraction of overlapping pixels -
getRequiredFractionOfOverlappingPixels
public float getRequiredFractionOfOverlappingPixels()float itk::simple::MaskedFFTNormalizedCorrelationImageFilter::GetRequiredFractionOfOverlappingPixels() const Set and get the required fraction of overlapping pixels -
getName
std::string itk::simple::MaskedFFTNormalizedCorrelationImageFilter::GetName() const Name of this class- Overrides:
getName
in classProcessObject
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toString
std::string itk::simple::MaskedFFTNormalizedCorrelationImageFilter::ToString() const Print ourselves out- Overrides:
toString
in classProcessObject
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execute
public Image execute(Image fixedImage, Image movingImage, Image fixedImageMask, Image movingImageMask) Image itk::simple::MaskedFFTNormalizedCorrelationImageFilter::Execute(const Image &fixedImage, const Image &movingImage, const Image &fixedImageMask, const Image &movingImageMask) Execute the filter on the input image
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