Abstract :
Recently, Chan and Vese developed an active contour
model for image segmentation and smoothing by using piecewise
constant and smooth representation of an image. Tsai et al. also
independently developed a segmentation and smoothing method
similar to the Chan and Vese piecewise smooth approach. These
models are active contours based on the Mumford–Shah variational
approach and the level-set method. In this paper, we develop
a new hierarchical method which has many advantages compared
to the Chan and Vese multiphase active contour models. First, unlike
previous works, the curve evolution partial differential equations
(PDEs) for different level-set functions are decoupled. Each
curve evolution PDE is the equation of motion of just one level-set
function, and different level-set equations of motion are solved in a
hierarchy. This decoupling of the motion equations of the level-set
functions speeds up the segmentation process significantly. Second,
because of the coupling of the curve evolution equations associated
with different level-set functions, the initialization of the level sets
in Chan and Vese’s method is difficult to handle. In fact, different
initial conditions may produce completely different results. The hierarchical
method proposed in this paper can avoid the problem
due to the choice of initial conditions. Third, in this paper, we use
the diffusion equation for denoising. This method, therefore, can
deal with very noisy images. In general, our method is fast, flexible,
not sensitive to the choice of initial conditions, and produces
very good results.
Keywords :
Level-set methods , Mumford–Shah functional. , Curve evolution , image segmentation and denoising