Title of article :
A Variational Model for Object Segmentation Using Boundary Information
and Shape Prior Driven by the Mumford-Shah Functional
Author/Authors :
Xavier Bresson، نويسنده , , PIERRE VANDERGHEYNST AND JEAN-PHILIPPE THIRAN، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
In this paper, we propose a new variational model to segment an object belonging to a given shape
space using the active contour method, a geometric shape prior and the Mumford-Shah functional. The core of our
model is an energy functional composed by three complementary terms. The first one is based on a shape model
which constrains the active contour to get a shape of interest. The second term detects object boundaries from
image gradients. And the third term drives globally the shape prior and the active contour towards a homogeneous
intensity region. The segmentation of the object of interest is given by the minimum of our energy functional. This
minimum is computed with the calculus of variations and the gradient descent method that provide a system of
evolution equations solved with the well-known level set method. We also prove the existence of this minimum in
the space of functions with bounded variation. Applications of the proposed model are presented on synthetic and
medical images.
Keywords :
image segmentation , variational model , Active contour , Shape prior , Principal components analysis , Shape registration , Mumford-Shah model , level set method
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION