We propose a novel approach for improving level set seg-
mentation methods by embedding the potential functions
from a discriminatively trained conditional random field
(CRF) into a level set energy function. The CRF terms can
be efficiently estimated and lead to both discriminative lo-
cal potentials and edge regularizers that take into account
interactions among the labels. Unlike discrete CRFs, the
use of a continuous level set framework allows the natural
use of flexible continuous regularizers such as shape priors.
We show promising experimental results for the method on
two difficult medical image segmentation tasks.