Collaboration diagram for Markov Random Field-based Filters:
Classes | |
class | itk::MRFImageFilter< TInputImage, TClassifiedImage > |
Implementation of a labeller object that uses Markov Random Fields to classify pixels in an image data set. More... | |
class | itk::RGBGibbsPriorFilter< TInputImage, TClassifiedImage > |
RGBGibbsPriorFilter applies Gibbs Prior model for the segmentation of MRF images. The core of the method is based on the minimization of a Gibbsian energy function. This energy function f can be divided into three part: f = f_1 + f_2 + f_3; f_1 is related to the object homogeneity, f_2 is related to the boundary smoothness, f_3 is related to the constraint of the observation (or the noise model). The two force components f_1 and f_3 are minimized by the GradientEnergy method while f_2 is minized by the GibbsTotalEnergy method. More... |