Title of article :
A Class-Adaptive Spatially Variant Mixture Model for Image Segmentation
Author/Authors :
Nikou، نويسنده , , C.، نويسنده , , Galatsanos، نويسنده , , N.P.، نويسنده , , Likas، نويسنده , , A.C.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
We propose a new approach for image segmentation
based on a hierarchical and spatially variant mixture model. According
to this model, the pixel labels are random variables and
a smoothness prior is imposed on them. The main novelty of this
work is a new family of smoothness priors for the label probabilities
in spatially variant mixture models. These Gauss–Markov
random field-based priors allow all their parameters to be estimated
in closed form via the maximum a posteriori (MAP) estimation
using the expectation-maximization methodology. Thus, it is
possible to introduce priors with multiple parameters that adapt to
different aspects of the data. Numerical experiments are presented
where the proposed MAP algorithms were tested in various image
segmentation scenarios. These experiments demonstrate that the
proposed segmentation scheme compares favorably to both standard
and previous spatially constrained mixture model-based segmentation.
Keywords :
maximum a posteriori (MAP) estimation , spatial smoothness constraints. , Clustering-based image segmentation , expectation-maximization (EM) algorithm , Gauss–Markov random field , Gaussian Mixture Model
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING