Recently, the Sobolev metric was introduced to define gradient flows of various geometric active contour energies. It was
shown that the Sobolev metric out-performs the traditional metric for the same energy in many cases such as for tracking where
the coarse scale changes of the contour are important. Some interesting properties of Sobolev gradient flows are that they
stabilize certain unstable traditional flows, and the order of the evolution PDEs are reduced when compared with traditional
gradient flows of the same energies. In this paper, we explore new possibilities for active contours made possible by Sobolev
active contours. The Sobolev method allows one to implement new energy-based active contour models that were not otherwise
considered because the traditional minimizing method cannot be used. In particular, we exploit the stabilizing and the order
reducing properties of Sobolev gradients to implement the gradient descent of these new energies. We give examples of this
class of energies, which include some simple geometric priors and new edge-based energies. We will show that these energies
can be quite useful for segmentation and tracking. We will show that the gradient flows using the traditional metric are either
ill-posed or numerically difficult to implement, and then show that the flows can be implemented in a stable and numerically
feasible manner using the Sobolev gradient.
G. Sundaramoorthi and A. Yezzi were supported by NSF CCR-0133736, NIH/NINDS R01-NS-037747, and Airforce MURI; G. Sapiro was
partially supported by NSF, ONR, NGA, DARPA, and the McKnight Foundation.