Title of article :
Bayesian Image Segmentation Using Local Iso-Intensity Structural Orientation
Author/Authors :
W. C. K. Wong and A. C. S. Chung، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Image segmentation is a fundamental problem in
early computer vision. In segmentation of flat shaded, nontextured
objects in real-world images, objects are usually assumed
to be piecewise homogeneous. This assumption, however, is not
always valid with images such as medical images. As a result, any
techniques based on this assumption may produce less-than-satisfactory
image segmentation. In this work, we relax the piecewise
homogeneous assumption. By assuming that the intensity nonuniformity
is smooth in the imaged objects, a novel algorithm that
exploits the coherence in the intensity profile to segment objects
is proposed. The algorithm uses a novel smoothness prior to
improve the quality of image segmentation. The formulation of
the prior is based on the coherence of the local structural orientation
in the image. The segmentation process is performed in a
Bayesian framework. Local structural orientation estimation is
obtained with an orientation tensor. Comparisons between the
conventional Hessian matrix and the orientation tensor have been
conducted. The experimental results on the synthetic images and
the real-world images have indicated that our novel segmentation
algorithm produces better segmentations than both the global
thresholding with the maximum likelihood estimation and the
algorithm with the multilevel logistic MRF model.
Keywords :
Biomedical image processing , Hessian matrices , image segmentation , maximum a posteriori(MAP) estimation , maximum likelihood estimation , Markov processes , spatial datastructures , stochastic fields.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING