Module compare Methods
CompareImageChannels
CompareImageChannels() compares one or more image channels of an image to a reconstructed image and returns the difference image.
The format of the CompareImageChannels method is:
Image *CompareImageChannels(const Image *image, const Image *reconstruct_image,const ChannelType channel, const MetricType metric,double *distortion,ExceptionInfo *exception)
A description of each parameter follows:
image
the image.
reconstruct_image
the reconstruct image.
channel
the channel.
metric
the metric.
distortion
the computed distortion between the images.
exception
return any errors or warnings in this structure.
GetImageChannelDistortion
GetImageChannelDistortion() compares one or more image channels of an image to a reconstructed image and returns the specified distortion metric.
The format of the CompareImageChannels method is:
MagickBooleanType GetImageChannelDistortion(const Image *image, const Image *reconstruct_image,const ChannelType channel, const MetricType metric,double *distortion,ExceptionInfo *exception)
A description of each parameter follows:
image
the image.
reconstruct_image
the reconstruct image.
channel
the channel.
metric
the metric.
distortion
the computed distortion between the images.
exception
return any errors or warnings in this structure.
GetImageChannelDistrortion
GetImageChannelDistrortion() compares the image channels of an image to a reconstructed image and returns the specified distortion metric for each channel.
The format of the CompareImageChannels method is:
double *GetImageChannelDistortions(const Image *image, const Image *reconstruct_image,const MetricType metric, ExceptionInfo *exception)
A description of each parameter follows:
image
the image.
reconstruct_image
the reconstruct image.
metric
the metric.
exception
return any errors or warnings in this structure.
IsImagesEqual
IsImagesEqual() measures the difference between colors at each pixel location of two images. A value other than 0 means the colors match exactly. Otherwise an error measure is computed by summing over all pixels in an image the distance squared in RGB space between each image pixel and its corresponding pixel in the reconstruct image. The error measure is assigned to these image members:
o mean_error_per_pixel: The mean error for any single pixel in the image.
normalized_mean_error
The normalized mean quantization error for any single pixel in the image. This distance measure is normalized to a range between 0 and 1. It is independent of the range of red, green, and blue values in the image.
normalized_maximum_error
The normalized maximum quantization error for any single pixel in the image. This distance measure is normalized to a range between 0 and 1. It is independent of the range of red, green, and blue values in your image.
A small normalized mean square error, accessed as image->normalized_mean_error, suggests the images are very similar in spatial layout and color.
The format of the IsImagesEqual method is:
MagickBooleanType IsImagesEqual(Image *image, const Image *reconstruct_image)
A description of each parameter follows.
image
the image.
reconstruct_image
the reconstruct image.
SimilarityImage
SimilarityImage() compares the reference image of the image and returns the best match offset. In addition, it returns a similarity image such that an exact match location is completely white and if none of the pixels match, black, otherwise some gray level in-between.
The format of the SimilarityImageImage method is:
Image *SimilarityImage(const Image *image,const Image *reference, RectangleInfo *offset,double *similarity,ExceptionInfo *exception)
A description of each parameter follows:
image
the image.
reference
find an area of the image that closely resembles this image.
o the best match offset of the reference image within the image.
similarity
the computed similarity between the images.
exception
return any errors or warnings in this structure.