Title of article :
Efficient Energies and Algorithms for Parametric Snakes
Author/Authors :
M. Jacob، نويسنده , , T. Blu، نويسنده , , and M. Unser، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
Parametric active contour models are one of the
preferred approaches for image segmentation because of their
computational efficiency and simplicity. However, they have a
few drawbacks which limit their performance. In this paper, we
identify some of these problems and propose efficient solutions
to get around them. The widely-used gradient magnitude-based
energy is parameter dependent; its use will negatively affect
the parametrization of the curve and, consequently, its stiffness.
Hence, we introduce a new edge-based energy that is independent
of the parameterization. It is also more robust since it takes into
account the gradient direction as well. We express this energy
term as a surface integral, thus unifying it naturally with the
region-based schemes. The unified framework enables the user to
tune the image energy to the application at hand. We show that
parametric snakes can guarantee low curvature curves, but only
if they are described in the curvilinear abscissa. Since normal
curve evolution do not ensure constant arc-length, we propose
a new internal energy term that will force this configuration.
The curve evolution can sometimes give rise to closed loops in
the contour, which will adversely interfere with the optimization
algorithm. We propose a curve evolution scheme that prevents
this condition.
Keywords :
Active contour , Curve , segmentation , Snake , spline.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING